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Deep Learning Market in Drug Discovery and Diagnostics - Industry Trends and Global Forecasts to 2035: By Therapeutic Areas and Key Geographical Regions

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    Report

  • 420 Pages
  • September 2025
  • Region: Global
  • Roots Analysis
  • ID: 5749415

The global deep learning market in drug discovery and diagnostic is estimated to grow from USD 3.6 billion in 2025, to USD 34.5 billion by 2035, at a CAGR of 21.9% during the forecast period, till 2035.

Deep Learning Market in Drug Discovery and Diagnostics: Growth and Trends

Deep learning is a complex machine learning algorithm that has the ability to process a large amount of data using neural networks. Over the past few years, deep learning has evolved as an excellent computational resource, as a result of which, various technology developers are shifting their focus towards this industry. Intelligent machines backed by relevant deep learning models are already producing significant results across various segments of the industry. The potential applications of the technique in feature extraction, medical imaging, diagnostics, and drug discovery and development have significantly assisted the healthcare and life sciences domain. Additionally, recent advancements in the deep learning market have demonstrated its potential in other healthcare-associated segments, such as molecular profiling, AI in medical imaging, data analysis and virtual screening. Owing to high investments, rising adoption of deep learning technologies and the ongoing pace of innovation, deep learning market in healthcare and drug discovery is projected to witness significant growth in the coming years.

Deep Learning Market in Drug Discovery and Diagnostics: Key Insights

The report delves into the current state of the deep learning market in drug discovery and diagnostics, and identifies potential growth opportunities within the industry.

Some key findings from the report include:

  • Presently, more than 70 players across the globe claim to offer deep learning technologies for potential applications across various steps of drug discovery and development process.
  • Majority (70%) of the stakeholders employ proprietary deep learning-based technologies in drug discovery to offer big data analysis.
  • Nearly 50% of the deep learning-based diagnostic providers are based in North America; most such players offer technologies for use across medical imaging and medical diagnosis related applications.
  • Around 70% of the players engaged in offering deep learning solutions for diagnostics have been established post-2011; majority of the players offer solutions focused on oncological disorders.
  • Foreseeing the lucrative potential, a large number of players have made investments worth over USD 15 billion, across 210 funding instances, to advance the initiatives undertaken by industry stakeholders.
  • Over the past few years, more than 704,000 patients have been recruited / enrolled in clinical trials registered for deep learning-based solutions / diagnostics across different geographies.
  • Some players have managed to establish strong competitive positions; in the near future, we expect multiple acquisitions to take place wherein the relative valuation of a firm is likely to be a key determinant.
  • Increasing adoption of deep learning technologies in the life sciences and healthcare industry is anticipated to create profitable business opportunities for technology developers.
  • The market opportunity associated with deep learning in drug discovery is expected to witness an annualized growth rate of 23% over the coming 12 years.

Report Segmentation

Therapeutic Areas

  • Oncological Disorders 
  • Infectious Diseases 
  • Neurological Disorders 
  • Immunological Disorders 
  • Endocrine Disorders
  • Cardiovascular Disorders 
  • Respiratory Disorders 
  • Eye Disorders 
  • Musculoskeletal Disorders 
  • Inflammatory Disorders
  • Other Disorders

Key Geographical Regions

  • North America
  • Europe
  • Asia-Pacific
  • Rest of the World

Deep Learning Market in Drug Discovery and Diagnostics: Key Segments

Oncological Disorders Segment Accounts for the Largest Share of the Deep Learning Market for Drug Discovery and Diagnostics

Based on the therapeutic area, the market is segmented into oncological disorders, infectious diseases, neurological disorders, immunological disorders, endocrine disorders, cardiovascular disorders, respiratory disorders, eye disorders, musculoskeletal disorders, inflammatory disorders and other disorders. While oncological disorders account for a relatively higher market share, it is worth highlighting that the musculoskeletal disorders segment is expected to witness substantial market growth in the coming years.

North America Accounts for the Largest Share of the Market

Based on key geographical regions, the market is segmented into North America, Europe, Asia-Pacific and Rest of the world. Majority share is expected to be captured by technology developers based in North America and Europe. It is worth highlighting that, over the years, the market for Asia-pacific is expected to grow at a higher CAGR.

Sample Players in the Deep Learning Market in Drug Discovery and Diagnostics, Profiled in the Report Include:

  • Aegicare
  • Aiforia Technologies
  • Ardigen
  • Berg
  • Google
  • Huawei
  • Merative
  • Nference
  • Nvidia
  • Owkin
  • Phenomic AI
  • Pixel AI

Primary Research Overview

The opinions and insights presented in this study were influenced by discussions conducted with multiple stakeholders. The research report features detailed transcripts of interviews held with the following industry stakeholders:

  • Chief Executive Officer, Advenio Technosys
  • Founder and Chief Executive Officer, AlgoSurg
  • Former Vice President of Product and Software Development, Arterys
  • Head of Strategy and Marketing, Arterys
  • Chief Technical Officer and Chief Operating Officer, Arya.ai
  • Former Research Scientist, ContextVision
  • Chief Executive Officer, Mediwhale
  • Chief Executive Officer, Nucleai

Deep Learning Market in Drug Discovery and Diagnostics: Research Coverage

  • Market Sizing and Opportunity Analysis: The report features an in-depth analysis of the deep learning market in drug discovery and diagnostics, focusing on key market segments, including [A] therapeutic area and [B] geographical regions.
  • Market Landscape 1: A comprehensive evaluation of deep learning companies offering technologies and services for the purpose of drug discovery, considering various parameters, such as [A] year of establishment, [B] company size, [C] location of headquarters, [D] application area, [E] focus area, [F] therapeutic area, [G] operational model, along with information on the [H] company’s service and product centric models.
  • Market Landscape 2: A comprehensive evaluation of deep learning companies offering technologies / services for diagnostics, considering various parameters, such as [A] year of establishment, [B] company size, [C] location of headquarters, [D] application area, [E] focus area, [F] therapeutic area, [G] type of offering / solution, along with information on various [H] compatible device (CT, MRI, Ultrasound, X-Ray, Mammography, PET and others).
  • Company Profiles: In-depth profiles of key deep learning technology and service providers based in North America, Europe and Asia Pacific, focusing on [A] company overviews, [B] financial information (if available), [C] service portfolio, [D] recent developments and [D] an informed future outlook.
  • Porter’s Five Forces: A qualitative analysis, highlighting the five competitive forces prevalent in deep learning industry, including threats for new entrants, bargaining power of companies using deep learning-based drug discovery and diagnostics, bargaining power of drug developers, threats of substitute technologies and rivalry among existing competitors.
  • Clinical Trial Analysis: Examination of completed, ongoing, and planned clinical studies that involve deep learning in diagnostics based on parameters like [A] trial registration year, [B] trial status, [C] patient enrollment, [D] type of sponsor / collaborator, [E] therapeutic area, [F] trial focus area, [G] study design, [H] geography and [I] most active industry and non-industry players (in terms of number of clinical trials conducted).
  • Funding and Investment Analysis: A detailed evaluation of the investments made in the deep learning domain, based on several parameters, such as [A] year of funding, [B] amount invested, [C] type of funding, [D] focus area, [E] therapeutic area, [F] geography, [G] most active players (in terms of number of funding instances and amount invested) and [H] key investors (in terms of number of funding instances).
  • Start-up Health Indexing: An analysis of the start-ups engaged in the deep learning market focused on drug discovery and diagnostics, based on several relevant parameters, such as focus area, therapeutic area, operational model, compatible device, type of offering and start-up health indexing.
  • Company Valuation Analysis: An elaborate valuation analysis of companies that are involved in the deep learning in drug discovery and diagnostics market, based on our proprietary, multi-variable dependent valuation model to estimate the current valuation / net worth of industry players.

Key Questions Answered in this Report

  • How many companies are currently engaged in this market?
  • Which are the leading companies in this market?
  • What factors are likely to influence the evolution of this market?
  • What is the current and future market size?
  • What is the CAGR of this market?
  • How is the current and future market opportunity likely to be distributed across key market segments?

Reasons to Buy this Report

  • The report provides a comprehensive market analysis, offering detailed revenue projections of the overall market and its specific sub-segments. This information is valuable to both established market leaders and emerging entrants.
  • Stakeholders can leverage the report to gain a deeper understanding of the competitive dynamics within the market. By analyzing the competitive landscape, businesses can make informed decisions to optimize their market positioning and develop effective go-to-market strategies.
  • The report offers stakeholders a comprehensive overview of the market, including key drivers, barriers, opportunities, and challenges. This information empowers stakeholders to stay abreast of market trends and make data-driven decisions to capitalize on growth prospects.

Additional Benefits

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  • Complimentary Excel Data Packs for all Analytical Modules in the Report
  • 10% Free Content Customization
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Table of Contents

1. PREFACE
1.1. Introduction
1.2. Key Market Insights
1.3. Scope of the Report
1.4. Research Methodology
1.5. Frequently Asked Questions
1.6. Chapter Outlines

2. EXECUTIVE SUMMARY
3. INTRODUCTION
3.1. Humans, Machines and Intelligence
3.2. The Science of Learning
3.2.1. Teaching Machines
3.2.1.1. Machines for Computing
3.2.1.2. Artificial Intelligence
3.3. The Big Data Revolution
3.3.1. Overview of Big Data
3.3.2. Role of Internet of Things (IoT)
3.3.3. Key Application Areas of Big Data
3.3.3.1. Big Data Analytics in Healthcare
3.3.3.2. Machine Learning
3.3.3.3. Deep Learning
3.4. Deep Learning in Healthcare
3.4.1. Personalized Medicine
3.4.2. Lifestyle Management
3.4.3. Drug Discovery
3.4.4. Clinical Trial Management
3.4.5. Diagnostics
3.5. Concluding Remarks

4. MARKET OVERVIEW: DEEP LEARNING IN DRUG DISCOVERY
4.1. Chapter Overview
4.2. Deep Learning in Drug Discovery: Overall Market Landscape of Service / Technology Providers
4.2.1. Analysis by Year of Establishment
4.2.2. Analysis by Company Size
4.2.3. Analysis by Location of Headquarters
4.2.4. Analysis by Application Area
4.2.5. Analysis by Focus Area
4.2.6. Analysis by Therapeutic Area
4.2.7. Analysis by Operational Model
4.2.7.1. Analysis by Service Centric Model
4.2.7.2. Analysis by Product Centric Model

5. MARKET OVERVIEW: DEEP LEARNING IN DIAGNOSTICS
5.1. Chapter Overview
5.2. Deep Learning in Diagnostics: Overall Market Landscape of Service / Technology Providers
5.2.1. Analysis by Year of Establishment
5.2.2. Analysis by Company Size
5.2.3. Analysis by Location of Headquarters
5.2.4. Analysis by Application Area
5.2.5. Analysis by Focus Area
5.2.6. Analysis by Therapeutic Area
5.2.7. Analysis by Type of Offering / Solution
5.2.8. Analysis by Compatible Device

6. COMPANY PROFILES
6.1. Chapter Overview
6.2. Aegicare
6.2.1. Company Overview
6.2.2. Service Portfolio
6.2.3. Recent Developments and Future Outlook
6.3. Aiforia Technologies
6.3.1. Company Overview
6.3.2. Financial Information
6.3.3. Service Portfolio
6.3.4. Recent Developments and Future Outlook
6.4. Ardigen
6.4.1. Company Overview
6.4.2. Financial Information
6.4.3. Service Portfolio
6.4.4. Recent Developments and Future Outlook
6.5. Berg
6.5.1. Company Overview
6.5.2. Service Portfolio
6.5.3. Recent Developments and Future Outlook
6.6. Google
6.6.1. Company Overview
6.6.2. Financial Information
6.6.3. Service Portfolio
6.6.4. Recent Developments and Future Outlook
6.7. Huawei
6.7.1. Company Overview
6.7.2. Financial Information
6.7.3. Service Portfolio
6.7.4. Recent Developments and Future Outlook
6.8. Merative
6.8.1. Company Overview
6.8.2. Service Portfolio
6.8.3. Recent Developments and Future Outlook
6.9. Nference
6.9.1. Company Overview
6.9.2. Service Portfolio
6.9.3. Recent Developments and Future Outlook
6.10. Nvidia
6.10.1. Company Overview
6.10.2. Financial Information
6.10.3. Service Portfolio
6.10.4. Recent Developments and Future Outlook
6.11. Owkin
6.11.1. Company Overview
6.11.2. Service Portfolio
6.11.3. Recent Developments and Future Outlook
6.12. Phenomic AI
6.12.1. Company Overview
6.12.2. Service Portfolio
6.12.3. Recent Developments and Future Outlook
6.13. Pixel AI
6.13.1. Company Overview
6.13.2. Service Portfolio
6.13.3. Recent Developments and Future Outlook

7. PORTER’S FIVE FORCES ANALYSIS
7.1. Chapter Overview
7.2. Methodology and Assumptions
7.3. Key Parameters
7.3.1. Threats of New Entrants
7.3.2. Bargaining Power of Companies Using Deep Learning for Drug Discovery and Diagnostics
7.3.3. Bargaining Power of Drug Developers
7.3.4. Threats of Substitute Technologies
7.3.5. Rivalry Among Existing Competitors
7.4. Concluding Remarks

8. CLINICAL TRIAL ANALYSIS
8.1. Chapter Overview
8.2. Scope and Methodology
8.3 Deep Learning Market: Clinical Trial Analysis
8.3.1. Analysis by Trial Registration Year
8.3.2. Analysis by Trial Status
8.3.3. Analysis by Trial Registration Year and Patient Enrollment
8.3.4. Analysis by Trial Registration Year and Trial Status
8.3.5. Analysis by Type of Sponsor / Collaborator
8.3.6. Analysis by Therapeutic Area
8.3.7. Word Cloud: Trial Focus Area
8.3.8. Analysis by Study Design
8.3.9. Geographical Analysis by Number of Clinical Trials
8.3.10. Geographical Analysis by Trial Registration Year and Patient Population
8.3.11. Leading Organizations: Analysis by Number of Registered Trials

9. FUNDING AND INVESTMENT ANALYSIS
9.1. Chapter Overview
9.2. Types of Funding
9.3. Deep Learning Market: Funding and Investment Analysis
9.3.1. Analysis by Year of Funding
9.3.2. Analysis by Amount Invested
9.3.3. Analysis by Type of Funding
9.3.4. Analysis by Year and Type of Funding
9.3.5. Analysis by Focus Areas
9.3.6. Analysis by Therapeutic Area
9.3.7. Analysis by Geography
9.3.8. Most Active Players: Analysis by Number of Funding Instances
9.3.9. Most Active Players: Analysis by Amount Invested
9.3.10. Most Active Investors: Analysis by Number of Funding Instances

10. START-UP HEALTH INDEXING
10.1. Chapter Overview
10.2. Start-ups Focused on Deep Learning in Drug Discovery
10.2.1. Methodology and Key Parameters
10.2.2. Analysis by Location of Headquarters
10.3. Benchmarking Analysis of Start-ups Focused on Deep Learning in Drug Discovery
10.3.1. Analysis by Focus Area
10.3.2. Analysis by Therapeutic Area
10.3.3. Analysis by Operational Model
10.3.4. Start-up Health Indexing: Roots Analysis Perspective
10.4. Start-ups Focused on Deep Learning in Diagnostics
10.4.1. Methodology and Key Parameters
10.4.2. Analysis by Location of Headquarters
10.5. Benchmarking Analysis of Start-ups Focused on Deep Learning in Diagnostics
10.5.1. Analysis by Focus Area
10.5.2. Analysis by Therapeutic Area
10.5.3. Analysis by Compatible Device
10.5.4. Analysis by Type of Offering
10.5.5. Start-up Health Indexing: Roots Analysis Perspective

11. COMPANY VALUATION ANALYSIS
11.1. Chapter Overview
11.2. Company Valuation Analysis: Key Parameters
11.3. Methodology
11.4. Company Valuation Analysis: Roots Analysis Proprietary Scores

12. MARKET SIZING AND OPPORTUNITY ANALYSIS: DEEP LEARNING IN DRUG DISCOVERY
12.1. Chapter Overview
12.2. Forecast Methodology
12.3. Key Assumptions
12.4. Overall Deep Learning in Drug Discovery Market, 2023-2035
12.4.1. Deep Learning in Drug Discovery Market: Analysis by Target Therapeutic Area, 2023-2035
12.4.1.1. Deep Learning in Drug Discovery Market for Oncological Disorders, 2023-2035
12.4.1.2. Deep Learning in Drug Discovery Market for Infectious Diseases, 2023-2035
12.4.1.3. Deep Learning in Drug Discovery Market for Neurological Disorders, 2023-2035
12.4.1.4. Deep Learning in Drug Discovery Market for Immunological Disorders, 2023-2035
12.4.1.5. Deep Learning in Drug Discovery Market for Endocrine Disorders, 2023-2035
12.4.1.6. Deep Learning in Drug Discovery Market for Cardiovascular Disorders, 2023-2035
12.4.1.7. Deep Learning in Drug Discovery Market for Respiratory Disorders, 2023-2035
12.4.1.8. Deep Learning in Drug Discovery Market for Other Disorders, 2023-2035
12.4.2. Deep Learning in Drug Discovery Market: Analysis by Geography, 2023-2035
12.4.2.1. Deep Learning in Drug Discovery Market in North America, 2023-2035
12.4.2.1.1. Deep Learning in Drug Discovery Market in the US, 2023-2035
12.4.2.1.2. Deep Learning in Drug Discovery Market in Canada, 2023-2035
12.4.2.2. Deep Learning in Drug Discovery Market in Europe, 2023-2035
12.4.2.2.1. Deep Learning in Drug Discovery Market in the UK, 2023-2035
12.4.2.2.2. Deep Learning in Drug Discovery Market in France, 2023-2035
12.4.2.2.3. Deep Learning in Drug Discovery Market in Germany, 2023-2035
12.4.2.2.4. Deep Learning in Drug Discovery Market in Spain, 2023-2035
12.4.2.2.5. Deep Learning in Drug Discovery Market in Italy, 2023-2035
12.4.2.2.6. Deep Learning in Drug Discovery Market in Rest of Europe, 2023-2035
12.4.2.3. Deep Learning in Drug Discovery Market in Asia Pacific, 2023-2035
12.4.2.3.1. Deep Learning in Drug Discovery Market in China, 2023-2035
12.4.2.3.2. Deep Learning in Drug Discovery Market in India, 2023-2035
12.4.2.3.3. Deep Learning in Drug Discovery Market in Japan, 2023-2035
12.4.2.3.4. Deep Learning in Drug Discovery Market in Australia, 2023-2035
12.4.2.3.5. Deep Learning in Drug Discovery Market in South Korea, 2023-2035
12.4.2.4. Deep Learning in Drug Discovery Market in Rest of the World, 2023-2035
12.5. Deep Learning in Drug Discovery Market: Cost Saving Potential
12.5.1. Key Assumptions and Methodology
12.5.2. Deep Learning in Drug Discovery Market: Overall Cost Saving Potential, 2023-2035

13. MARKET SIZING AND OPPORTUNITY ANALYSIS: DEEP LEARNING IN DIAGNOSTICS
13.1. Chapter Overview
13.2. Forecast Methodology
13.3. Key Assumptions
13.4. Overall Deep Learning in Diagnostics Market, 2023-2035
13.4.1. Deep Learning in Diagnostics Market: Analysis by Target Therapeutic Area, 2023-2035
13.4.1.1. Deep Learning in Diagnostics Market for Oncological Disorders, 2023-2035
13.4.1.2. Deep Learning in Diagnostics Market for Cardiovascular Disorders, 2023-2035
13.4.1.3. Deep Learning in Diagnostics Market for Neurological Disorders, 2023-2035
13.4.1.4. Deep Learning in Diagnostics Market for Endocrine Disorders, 2023-2035
13.4.1.5. Deep Learning in Diagnostics Market for Respiratory Disorders, 2023-2035
13.4.1.6. Deep Learning in Diagnostics Market for Ophthalmic Disorders, 2023-2035
13.4.1.7. Deep Learning in Diagnostics Market for Infectious Diseases, 2023-2035
13.4.1.8. Deep Learning in Diagnostics Market for Musculoskeletal Disorders, 2023-2035
13.4.1.9. Deep Learning in Diagnostics Market for Inflammatory Disorders, 2023-2035
13.4.1.10. Deep Learning in Diagnostics Market for Other Disorders, 2023-2035
13.4.2. Deep Learning in Diagnostics Market: Analysis by Geography, 2023-2035
13.4.2.1. Deep Learning in Diagnostics Market in North America, 2023-2035
13.4.2.2. Deep Learning in Diagnostics Market in Europe, 2023-2035
13.4.2.3. Deep Learning in Diagnostics Market in Asia Pacific, 2023-2035
13.4.2.4. Deep Learning in Diagnostics Market in Rest of the World, 2023-2035
13.5. Deep Learning in Diagnostics Market: Cost Saving Potential
13.5.1. Key Assumptions and Methodology
13.5.2. Deep Learning in Diagnostics Market: Overall Cost Saving Potential, 2023-2035

14. DEEP LEARNING IN HEALTHCARE: EXPERT INSIGHTS
14.1. Chapter Overview
14.2. Sean Lane, Chief Executive Officer (Olive)
14.3. Junaid Kalia, Founder (NeuroCare.AI) and Adeel Memon, Assistant Professor, Neurology Specialist (West Virginia University Hospitals)
14.4. David Reich, President / Chief Operating Officer (The Mount Sinai Hospital) and Robbie Freeman, Vice President of Clinical Innovation (The Mount Sinai Hospital)
14.5. Elad Benjamin, Vice President, Business Leader Clinical Data Services (Philips) and Jonathan Laserson, Senior Deep Learning Researcher (Apple)
14.6. Kevin Lyman, Founder and Chief Science Officer (Enlitic)

15. CONCLUDING REMARKS
16. INTERVIEW TRANSCRIPTS
16.1. Chapter Overview
16.2. Nucleai
16.2.1. Company Overview
16.2.2. Interview Transcript
16.3. Mediwhale
16.3.1. Company Overview
16.3.2. Interview Transcript
16.4. Arterys
16.4.1. Company Overview
16.4.2. Interview Transcript
16.5. AlgoSurg
16.5.1. Company Overview
16.5.2. Interview Transcript
16.6. ContextVision
16.6.1. Company Overview
16.6.2. Interview Transcript
16.7. Advenio Technosys
16.7.1. Company Overview
16.7.2. Interview Transcript
16.8. Arterys
16.8.1. Company Overview
16.8.2. Interview Transcript
16.9. Arya.ai
16.9.1. Company Overview
16.9.2. Interview Transcript

17. APPENDIX 1: TABULATED DATA18. APPENDIX 2: LIST OF COMPANIES AND ORGANIZATIONS
LIST OF FIGURES
Figure 2.1 Executive Summary: Market Overview (Deep Learning in Drug Discovery)
Figure 2.2 Executive Summary: Market Overview (Deep Learning in Diagnostics)
Figure 2.3 Executive Summary: Clinical Trial Analysis
Figure 2.4 Executive Summary: Funding Analysis
Figure 2.5 Executive Summary: Start-up Health Indexing
Figure 2.6 Executive Summary: Company Valuation Analysis
Figure 2.7 Executive Summary: Market Sizing and Opportunity Analysis (Deep Learning in Drug Discovery)
Figure 2.8 Executive Summary: Market Sizing and Opportunity Analysis (Deep Learning in Diagnostics)
Figure 3.1 Key Stages of Observational Learning
Figure 3.2 Understanding Neurons and the Human Brain: Key Scientific Contributors
Figure 3.3 Big Data: The Three V’s
Figure 3.4 Internet of Things: Framework
Figure 3.5 Internet of Things: Applications in Healthcare
Figure 3.6 Big Data: Application Areas
Figure 3.7 Big Data: Opportunities in Healthcare
Figure 3.8 Machine Learning Algorithm: Workflow
Figure 3.9 Neural Networks: Architecture
Figure 3.10 Deep Learning: Image Recognition
Figure 3.11 Deep Learning Frameworks: Relative Performance
Figure 3.12 Personalized Medicine: Applications in Healthcare
Figure 4.1 Deep Learning in Drug Discovery: Distribution by Year of Establishment
Figure 4.2 Deep Learning in Drug Discovery: Distribution by Company Size
Figure 4.3 Deep Learning in Drug Discovery: Distribution by Location of Headquarters (Region-wise)
Figure 4.4 Deep Learning in Drug Discovery: Distribution by Location of Headquarters (Country-wise)
Figure 4.5 Deep Learning in Drug Discovery: Distribution by Application Area
Figure 4.6 Deep Learning in Drug Discovery: Distribution by Focus Area
Figure 4.7 Deep Learning in Drug Discovery: Distribution by Therapeutic Area
Figure 4.8 Deep Learning in Drug Discovery: Distribution by Operational Model
Figure 4.9 Deep Learning in Drug Discovery: Distribution by Company Size and Operational Model
Figure 4.10 Deep Learning in Drug Discovery: Distribution by Service Centric Model
Figure 4.11 Deep Learning in Drug Discovery: Distribution by Product Centric Model
Figure 5.1 Deep Learning in Diagnostics: Distribution by Year of Establishment
Figure 5.2 Deep Learning in Diagnostics: Distribution by Company Size
Figure 5.3 Deep Learning in Diagnostics: Distribution by Location of Headquarters (Region-wise)
Figure 5.4 Deep Learning in Diagnostics: Distribution by Location of Headquarters (Country-wise)
Figure 5.5 Deep Learning in Diagnostics: Distribution by Application Area
Figure 5.6 Deep Learning in Diagnostics: Distribution by Focus Area
Figure 5.7 Deep Learning in Diagnostics: Distribution by Therapeutic Area
Figure 5.8 Deep Learning in Diagnostics: Distribution by Type of Offering / Solution
Figure 5.9 Deep Learning in Diagnostics: Distribution by Company Size and Type of Offering / Solution
Figure 5.10 Deep Learning in Diagnostics: Distribution by Compatible Device
Figure 6.1 Aegicare: Deep Learning Derived Service Portfolio
Figure 6.2 Aiforia Technologies: Annual Revenues, 2019-H1 2022 (EUR Thousand)
Figure 6.3 Aiforia Technologies: Deep Learning Derived Service Portfolio
Figure 6.4 Ardigen: Annual Revenues, 2019-9M 2022 (EUR Million)
Figure 6.5 Ardigen: Deep Learning Derived Service Portfolio
Figure 6.6 Berg: Deep Learning Derived Service Portfolio
Figure 6.7 Google: Annual Revenues, 2019-2022 (USD Billion)
Figure 6.8 Google: Deep Learning Derived Service Portfolio
Figure 6.9 Huawei: Annual Revenues, 2019-9M 2022 (CNY Billion)
Figure 6.10 Huawei: Deep Learning Derived Service Portfolio
Figure 6.11 Merative: Deep Learning Derived Service Portfolio
Figure 6.12 Nference: Deep Learning Derived Service Portfolio
Figure 6.13 Nvidia: Annual Revenues, 2019-2022 (USD Billion)
Figure 6.14 Nvidia: Deep Learning Derived Service Portfolio
Figure 6.15 Owkin: Deep Learning Derived Service Portfolio
Figure 6.16 Phenomic AI: Deep Learning Derived Service Portfolio
Figure 6.17 Pixel AI: Deep Learning Derived Service Portfolio
Figure 7.1 Porter’s Five Forces: Key Parameters
Figure 7.2 Porter’s Five Forces: Harvey Ball Analysis
Figure 8.1 Clinical Trial Analysis: Scope and Methodology
Figure 8.2 Clinical Trial Analysis: Distribution by Trial Registration Year, Pre-2018-2022
Figure 8.3 Clinical Trial Analysis: Distribution by Trial Status
Figure 8.4 Clinical Trial Analysis: Distribution by Trial Registration Year and Patient Enrollment, 2019-2022
Figure 8.5 Clinical Trial Analysis: Distribution by Trial Registration Year and Trial Status, Pre-2018-2022
Figure 8.6 Clinical Trial Analysis: Distribution by Type of Sponsor / Collaborator
Figure 8.7 Clinical Trial Analysis: Distribution by Therapeutic Area
Figure 8.8 Word Cloud: Trial Focus Area
Figure 8.9 Clinical Trial Analysis: Distribution by Study Design
Figure 8.10 Clinical Trial Analysis: Geographical Distribution of Trials
Figure 8.11 Clinical Trial Analysis: Geographical Distribution by Trial Registration Year and Patient Enrollment
Figure 8.12 Leading Organizations: Distribution by Number of Registered Trials
Figure 9.1 Funding and Investment Analysis: Cumulative Distribution of Number of Instances by Year, 2019-2022
Figure 9.2 Funding and Investment Analysis: Cumulative Distribution of Amount Invested, 2019-2022 (USD Million)
Figure 9.3 Funding and Investment Analysis: Distribution of Instances by Type of Funding
Figure 9.4 Funding and Investment Analysis: Distribution of Amount Invested by Type of Funding (USD Million)
Figure 9.5 Funding and Investment Analysis: Distribution of Instances by Year and Type of Funding
Figure 9.6 Funding and Investment Analysis: Distribution of Instances by Focus Area
Figure 9.7 Funding and Investment Analysis: Distribution Instances by Therapeutic Area
Figure 9.8 Funding and Investment Analysis: Geographical Distribution of Funding Instances
Figure 9.9 Funding and Investment Analysis: Geographical Distribution by Amount Invested (USD Million)
Figure 9.10 Most Active Players: Distribution by Number of Funding Instances
Figure 9.11 Most Active Players: Distribution by Amount Invested (USD Million)
Figure 9.12 Most Active Investors: Distribution by Number of Funding Instances
Figure 9.13 Summary of Funding and Investments, 2019-2022 (USD Million)
Figure 10.1 Start-ups Focused on Deep Learning in Drug Discovery: Distribution by Location of Headquarters
Figure 10.2 Start-ups Focused on Deep Learning in Drug Discovery: Distribution by Focus Area
Figure 10.3 Start-ups Focused on Deep Learning in Drug Discovery: Distribution by Therapeutic Area
Figure 10.4 Start-ups Focused on Deep Learning in Drug Discovery: Distribution by Operational Model
Figure 10.5 Start-ups Focused on Deep Learning in Drug Discovery: Roots Analysis Perspective
Figure 10.6 Start-ups Focused on Deep Learning in Drug Discovery: Wind Rose Analysis
Figure 10.7 Start-ups Focused on Deep Learning in Diagnostics: Distribution by Location of Headquarters
Figure 10.8 Start-ups Focused on Deep Learning in Diagnostics: Distribution by Focus Area
Figure 10.9 Start-ups Focused on Deep Learning in Diagnostics: Distribution by Therapeutic Area
Figure 10.10 Start-ups Focused on Deep Learning in Diagnostics: Distribution by Compatible Device
Figure 10.11 Start-ups Focused on Deep Learning in Diagnostics: Distribution by Type of Offering
Figure 10.12 Start-ups Focused on Deep Learning in Diagnostics: Roots Analysis Perspective
Figure 10.13 Start-ups Focused on Deep Learning in Diagnostics: Wind Rose Analysis
Figure 12.1 Overall Deep Learning in Drug Discovery Market, 2023-2035 (USD Billion)
Figure 12.2 Deep Learning in Drug Discovery Market: Distribution by Target Therapeutic Area, 2023-2035 (USD Million)
Figure 12.3 Deep Learning in Drug Discovery Market for Oncological Disorders, 2023-2035 (USD Million)
Figure 12.4 Deep Learning in Drug Discovery Market for Infectious Diseases, 2023-2035 (USD Million)
Figure 12.5 Deep Learning in Drug Discovery Market for Neurological Disorders, 2023-2035 (USD Million)
Figure 12.6 Deep Learning in Drug Discovery Market for Immunological Disorders, 2023-2035 (USD Million)
Figure 12.7 Deep Learning in Drug Discovery Market for Endocrine Disorders, 2023-2035 (USD Million)
Figure 12.8 Deep Learning in Drug Discovery Market for Cardiovascular Disorders, 2023-2035 (USD Million)
Figure 12.9 Deep Learning in Drug Discovery Market for Respiratory Disorders, 2023-2035 (USD Million)
Figure 12.10 Deep Learning in Drug Discovery Market for Other Disorders, 2023-2035 (USD Million)
Figure 12.11 Deep Learning in Drug Discovery Market: Distribution by Geography, 2023-2035 (USD Million)
Figure 12.12 Deep Learning in Drug Discovery Market in North America, 2023-2035 (USD Million)
Figure 12.13 Deep Learning in Drug Discovery Market in the US, 2023-2035 (USD Million)
Figure 12.14 Deep Learning in Drug Discovery Market in Canada, 2023-2035 (USD Million)
Figure 12.15 Deep Learning in Drug Discovery Market in Europe, 2023-2035 (USD Million)
Figure 12.16 Deep Learning in Drug Discovery Market in the UK, 2023-2035 (USD Million)
Figure 12.17 Deep Learning in Drug Discovery Market in France, 2023-2035 (USD Million)
Figure 12.18 Deep Learning in Drug Discovery Market in Germany, 2023-2035 (USD Million)
Figure 12.19 Deep Learning in Drug Discovery Market in Spain, 2023-2035 (USD Million)
Figure 12.20 Deep Learning in Drug Discovery Market in Italy, 2023-2035 (USD Million)
Figure 12.21 Deep Learning in Drug Discovery Market in Rest of Europe, 2023-2035 (USD Million)
Figure 12.22 Deep Learning in Drug Discovery Market in Asia Pacific, 2023-2035 (USD Million)
Figure 12.23 Deep Learning in Drug Discovery Market in China, 2023-2035 (USD Million)
Figure 12.24 Deep Learning in Drug Discovery Market in India, 2023-2035 (USD Million)
Figure 12.25 Deep Learning in Drug Discovery Market in Japan, 2023-2035 (USD Million)
Figure 12.26 Deep Learning in Drug Discovery Market in Australia, 2023-2035 (USD Million)
Figure 12.27 Deep Learning in Drug Discovery Market in South Korea, 2023-2035 (USD Million)
Figure 12.28 Deep Learning in Drug Discovery Market in Rest of the World, 2023-2035 (USD Million)
Figure 12.29 Overall Cost Saving Potential Associated with the Use of Deep Learning in Drug Discovery, 2023-2035 (USD Billion)
Figure 13.1 Overall Deep Learning in Diagnostics Market, 2023-2035 (USD Billion)
Figure 13.2 Deep Learning in Diagnostics Market: Distribution by Target Therapeutic Area, 2023-2035 (USD Million)
Figure 13.3 Deep Learning in Diagnostics Market for Oncological Disorders, 2023-2035 (USD Million)
Figure 13.4 Deep Learning in Diagnostics Market for Cardiovascular Disorders, 2023-2035 (USD Million)
Figure 13.5 Deep Learning in Diagnostics Market for Neurological Disorders, 2023-2035 (USD Million)
Figure 13.6 Deep Learning in Diagnostics Market for Endocrine Disorders, 2023-2035 (USD Million)
Figure 13.7 Deep Learning in Diagnostics Market for Respiratory Disorders, 2023-2035 (USD Million)
Figure 13.8 Deep Learning in Diagnostics Market for Ophthalmic Disorders, 2023-2035 (USD Million)
Figure 13.9 Deep Learning in Diagnostics Market for Infectious Diseases, 2023-2035 (USD Million)
Figure 13.10 Deep Learning in Diagnostics Market for Musculoskeletal Disorders, 2023-2035 (USD Million)
Figure 13.11 Deep Learning in Diagnostics Market for Inflammatory Disorders, 2023-2035 (USD Million)
Figure 13.12 Deep Learning in Diagnostics Market for Other Disorders, 2023-2035 (USD Million)
Figure 13.13 Deep Learning in Diagnostics Market: Distribution by Geography, 2023-2035 (USD Million)
Figure 13.14 Deep Learning in Diagnostics Market in North America, 2023-2035 (USD Million)
Figure 13.15 Deep Learning in Diagnostics Market in Europe, 2023-2035 (USD Million)
Figure 13.16 Deep Learning in Diagnostics Market in Asia Pacific, 2023-2035 (USD Million)
Figure 13.17 Deep Learning in Diagnostics Market in Rest of the World, 2023-2035 (USD Million)
Figure 13.18 Overall Cost Saving Potential Associated with the Use of Deep Learning in Diagnostics, 2023-2035 (USD Billion)
Figure 15.1 Concluding Remarks: Market Overview (Deep Learning in Drug Discovery)
Figure 15.2 Concluding Remarks: Market Overview (Deep Learning in Diagnostics)
Figure 15.3 Concluding Remarks: Clinical Trial Analysis
Figure 15.4 Concluding Remarks: Funding Analysis
Figure 15.5 Concluding Remarks: Start-up Health Indexing
Figure 15.6 Concluding Remarks: Company Valuation Analysis
Figure 15.7 Concluding Remarks: Market Sizing and Opportunity Analysis (Deep Learning in Drug Discovery)
Figure 15.8 Concluding Remarks: Market Sizing and Opportunity Analysis (Deep Learning in Diagnostics)

LIST OF TABLES
Table 3.1 Machine Learning: A Brief History
Table 4.1 Deep Learning in Drug Discovery: List of Service / Technology Providers
Table 4.2 Deep Learning in Drug Discovery Services / Technology Providers: Information on Application Area, Focus Area, Therapeutic Area and Operational Model
Table 4.3 Deep Learning in Drug Discovery Services / Technology Providers: Information on Operational Model
Table 4.4 Deep Learning in Drug Discovery Services / Technology Providers: Information on Service Centric Model
Table 4.5 Deep Learning in Drug Discovery Services / Technology Providers: Information on Product Centric Model
Table 5.1 Deep Learning in Diagnostics: List of Service / Technology Providers
Table 5.2 Deep Learning in Diagnostics Services / Technology Providers: Information on Application Area, Focus Area and Therapeutic Area
Table 5.3 Deep Learning in Diagnostics Services / Technology Providers: Information on Type of Offering / Solution and Compatible Device
Table 6.1 List of Companies Profiled
Table 6.2 Aegicare: Company Overview
Table 6.3 Aiforia Technologies: Company Overview
Table 6.4 Aiforia Technologies: Recent Developments and Future Outlook
Table 6.5 Ardigen: Company Overview
Table 6.6 Ardigen: Recent Developments and Future Outlook
Table 6.7 Berg: Company Overview
Table 6.8 Berg: Recent Developments and Future Outlook
Table 6.9 Google: Company Overview
Table 6.10 Google: Recent Developments and Future Outlook
Table 6.11 Huawei: Company Overview
Table 6.12 Huawei: Recent Developments and Future Outlook
Table 6.13 Merative: Company Overview
Table 6.14 Nference: Company Overview
Table 6.15 Nference: Recent Developments and Future Outlook
Table 6.16 Nvidia: Company Overview
Table 6.17 Nvidia: Recent Developments and Future Outlook
Table 6.18 Owkin: Company Overview
Table 6.19 Owkin: Recent Developments and Future Outlook
Table 6.20 Phenomic AI: Company Overview
Table 6.21 Pixel AI: Company Overview
Table 9.1 Deep Learning Market: List of Funding and Investments, 2019-2022
Table 9.2 Funding and Investment Analysis: Summary of Investments
Table 9.3 Funding and Investment Analysis: Summary of Venture Capital Funding
Table 10.1 List of Start-ups Focused on Deep Learning in Drug Discovery
Table 10.2 List of Start-ups Focused on Deep Learning in Diagnostics
Table 11.1 Company Valuation Analysis: Scoring Sheet
Table 11.2 Company Valuation Analysis: Estimated Valuation by Year of Establishment
Table 11.3 Company Valuation Analysis: Estimated Valuation by Number of Employees
Table 16.1 Mediwhale: Key Highlights
Table 16.2 Advenio Technosys: Key Highlights
Table 16.3 Arterys: Key Highlights
Table 16.4 Arya.ai: Key Highlights
Table 17.1 Deep Learning in Drug Discovery: Distribution by Year of Establishment
Table 17.2 Deep Learning in Drug Discovery: Distribution by Company Size
Table 17.3 Deep Learning in Drug Discovery: Distribution by Location of Headquarters (Region-wise)
Table 17.4 Deep Learning in Drug Discovery: Distribution by Location of Headquarters (Country-wise)
Table 17.5 Deep Learning in Drug Discovery: Distribution by Application Area
Table 17.6 Deep Learning in Drug Discovery: Distribution by Focus Area
Table 17.7 Deep Learning in Drug Discovery: Distribution by Therapeutic Area
Table 17.8 Deep Learning in Drug Discovery: Distribution by Operational Model
Table 17.9 Deep Learning in Drug Discovery: Distribution by Company Size and Operational Model
Table 17.10 Deep Learning in Drug Discovery: Distribution by Service Centric Model
Table 17.11 Deep Learning in Drug Discovery: Distribution by Product Centric Model
Table 17.12 Deep Learning in Diagnostics: Distribution by Year of Establishment
Table 17.13 Deep Learning in Diagnostics: Distribution by Company Size
Table 17.14 Deep Learning in Diagnostics: Distribution by Location of Headquarters (Region-wise)
Table 17.15 Deep Learning in Diagnostics: Distribution by Location of Headquarters (Country-wise)
Table 17.16 Deep Learning in Diagnostics: Distribution by Application Area
Table 17.17 Deep Learning in Diagnostics: Distribution by Focus Area
Table 17.18 Deep Learning in Diagnostics: Distribution by Therapeutic Area
Table 17.19 Deep Learning in Diagnostics: Distribution by Type of Offering / Solution
Table 17.20 Deep Learning in Diagnostics: Distribution by Company Size and Type of Offering / Solution
Table 17.21 Deep Learning in Diagnostics: Distribution by Compatible Device
Table 17.22 Aiforia Technologies: Annual Revenues, 2019 - H1 2022 (EUR Thousand)
Table 17.23 Ardigen: Annual Revenues, 2019 - 9M 2022 (EUR Million)
Table 17.24 Google: Annual Revenues, 2019-2022 (USD Billion)
Table 17.25 Huawei: Annual Revenues, 2019 - 9M 2022 (CNY Billion)
Table 17.26 Nvidia: Annual Revenues, 2019-2022 (USD Billion)
Table 17.27 Clinical Trial Analysis: Distribution by Trial Registration Year, Pre-2018 - 2022
Table 17.28 Clinical Trial Analysis: Distribution by Trial Status
Table 17.29 Clinical Trial Analysis: Distribution by Trial Registration Year and Patient Enrollment, 2019-2022
Table 17.30 Clinical Trial Analysis: Distribution by Trial Registration Year and Trial Status, Pre-2018 - 2022
Table 17.31 Clinical Trial Analysis: Distribution by Type of Sponsor / Collaborator
Table 17.32 Clinical Trial Analysis: Distribution by Therapeutic Area
Table 17.33 Clinical Trial Analysis: Distribution by Study Design
Table 17.34 Clinical Trial Analysis: Geographical Distribution of Trials
Table 17.35 Clinical Trial Analysis: Geographical Distribution by Trial Registration Year and Enrolled Patient Population
Table 17.36 Leading Organizations: Distribution by Number of Registered Trials
Table 17.37 Funding and Investment Analysis: Cumulative Distribution of Number of Instances by Year, 2019-2022
Table 17.38 Funding and Investment Analysis: Cumulative Distribution of Amount Invested, 2019-2022 (USD Million)
Table 17.39 Funding and Investment Analysis: Distribution of Instances by Type of Funding
Table 17.40 Funding and Investment Analysis: Distribution of Amount Invested by Type of Funding (USD Million)
Table 17.41 Funding and Investment Analysis: Distribution of Instances by Year and Type of Funding
Table 17.42 Funding and Investments: Distribution of Instances by Focus Area
Table 17.43 Funding and Investment Analysis: Distribution of Instances by Therapeutic Area
Table 17.44 Funding and Investment Analysis: Geographical Distribution of Funding Instances
Table 17.45 Funding and Investment Analysis: Geographical Distribution by Amount Invested (USD Million)
Table 17.46 Most Active Players: Distribution by Number of Funding Instances
Table 17.47 Most Active Players: Distribution by Amount Invested (USD Million)
Table 17.48 Most Active Investors: Distribution by Number of Funding Instances
Table 17.49 Start-ups Focused on Deep Learning in Drug Discovery: Distribution by Location of Headquarters
Table 17.50 Start-ups Focused on Deep Learning in Drug Discovery: Distribution by Focus Area
Table 17.51 Start-ups Focused on Deep Learning in Drug Discovery: Distribution by Therapeutic Area
Table 17.52 Start-ups Focused on Deep Learning in Drug Discovery: Distribution by Operational Model
Table 17.53 Start-ups Focused on Deep Learning in Diagnostics: Distribution by Location of Headquarters
Table 17.54 Start-ups Focused on Deep Learning in Diagnostics: Distribution by Focus Area
Table 17.55 Start-ups Focused on Deep Learning in Diagnostics: Distribution by Therapeutic Area
Table 17.56 Start-ups Focused on Deep Learning in Diagnostics: Distribution by Compatible Device
Table 17.57 Start-ups Focused on Deep Learning in Diagnostics: Distribution by Type of Offering
Table 17.58 Overall Deep Learning in Drug Discovery Market: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Billion)
Table 17.59 Deep Learning in Drug Discovery Market: Distribution by Therapeutic Area, 2023-2035 (USD Billion)
Table 17.60 Deep Learning in Drug Discovery Market for Oncological Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.61 Deep Learning in Drug Discovery Market for Infectious Diseases: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.62 Deep Learning in Drug Discovery Market for Neurological Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.63 Deep Learning in Drug Discovery Market for Immunological Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.64 Deep Learning in Drug Discovery Market for Endocrine Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.65 Deep Learning in Drug Discovery Market for Cardiovascular Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.66 Deep Learning in Drug Discovery Market for Respiratory Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.67 Deep Learning in Drug Discovery Market for Other Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.68 Deep Learning in Drug Discovery Market: Distribution by Geography, 2023-2035 (USD Billion)
Table 17.69 Deep Learning in Drug Discovery Market in North America: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.70 Deep Learning in Drug Discovery Market in the US: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.71 Deep Learning in Drug Discovery Market in Canada: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.72 Deep Learning in Drug Discovery Market in Europe: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.73 Deep Learning in Drug Discovery Market in the UK: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.74 Deep Learning in Drug Discovery Market in France: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.75 Deep Learning in Drug Discovery Market in Germany: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.76 Deep Learning in Drug Discovery Market in Spain: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.77 Deep Learning in Drug Discovery Market in Italy: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.78 Deep Learning in Drug Discovery Market in Rest of Europe: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.79 Deep Learning in Drug Discovery Market in Asia Pacific: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.80 Deep Learning in Drug Discovery Market in China: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.81 Deep Learning in Drug Discovery Market in India: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.82 Deep Learning in Drug Discovery Market in Japan: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.83 Deep Learning in Drug Discovery Market in Australia: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.84 Deep Learning in Drug Discovery Market in South Korea: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.85 Deep Learning in Drug Discovery Market in Rest of the World: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.86 Overall Cost Saving Potential Associated with the Use of Deep Learning in Drug Discovery, 2023-2035 (USD Billion)
Table 17.87 Overall Deep Learning in Diagnostics Market: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Billion)
Table 17.88 Deep Learning in Diagnostics Market: Distribution by Therapeutic Area, 2023-2035 (USD Billion)
Table 17.89 Deep Learning in Diagnostics Market for Oncological Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.90 Deep Learning in Diagnostics Market for Cardiovascular Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.91 Deep Learning in Diagnostics Market for Neurological Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.92 Deep Learning in Diagnostics Market for Endocrine Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.93 Deep Learning in Diagnostics Market for Respiratory Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.94 Deep Learning in Diagnostics Market for Ophthalmic Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.95 Deep Learning in Diagnostics Market for Infectious Diseases: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.96 Deep Learning in Diagnostics Market for Musculoskeletal Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.97 Deep Learning in Diagnostics Market for Inflammatory Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.98 Deep Learning in Diagnostics Market for Other Disorders: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.99 Deep Learning in Diagnostics Market: Distribution by Geography, 2023-2035 (USD Billion)
Table 17.100 Deep Learning in Diagnostics Market in North America: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.101 Deep Learning in Diagnostics Market in Europe: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.102 Deep Learning in Diagnostics Market in Asia Pacific: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.103 Deep Learning in Diagnostics Market in Rest of the World: Conservative, Base and Optimistic Scenarios, 2023-2035 (USD Million)
Table 17.104 Overall Cost Saving Potential Associated with the Use of Deep Learning in Diagnostics, 2023-2035 (USD Billion)

Companies Mentioned (Partial List)

A selection of companies mentioned in this report includes, but is not limited to:

  • Aegicare
  • Aiforia Technologies
  • Ardigen
  • Berg
  • Google
  • Huawei
  • Merative
  • Nference
  • Nvidia
  • Owkin
  • Phenomic AI
  • Pixel AI

Methodology

 

 

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