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市場調查報告書
商品編碼
1919788

全球基因組學人工智慧市場(至 2040 年):按組件類型、技術類型、功能類型、應用類型、最終用戶類型、公司規模、主要地區、行業趨勢和預測

AI in Genomics Market, till 2040: Distribution by Type of Component, Type of Technology, Type of Functionality, Type of Application, Type of End User, Company Size and Key Geographical Regions: Industry Trends and Global Forecasts

出版日期: | 出版商: Roots Analysis | 英文 165 Pages | 商品交期: 7-10個工作天內

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簡介目錄

基因體學人工智慧市場展望

全球基因組學人工智慧市場預計將從目前的 19.7 億美元成長到 2040 年的 3,174 億美元,預測期內複合年增長率 (CAGR) 為 43.75%。

人工智慧正在透過處理來自 DNA 測序的大量數據集並揭示傳統技術以前忽略的見解,從而改變基因組學領域。下一代測序等先進技術產生了大量的遺傳數據。機器學習和深度學習等人工智慧應用在預測疾病風險、確定蛋白質結構、分析基因表現以及整合多組學資訊以實現個人化醫療方面表現出色。這將有助於快速發現新藥、利用 CRISPR 進行精準的基因組編輯,以及根據每個人的基因藍圖客製化治療方案。

隨著新一代定序技術產生的基因組數據爆炸式增長,傳統分析方法難以應對,需要人工智慧的模式識別能力,基因組學領域的人工智慧市場預計將顯著增長。

AI in Genomics Market-IMG1

高階主管的策略洞察

人工智慧在藥物發現和基因組學研究中的變革性作用

人工智慧正在透過提高效率、準確性和決策能力,在革新藥物發現和基因組學研究中發揮變革性作用。傳統上,藥物開發是一個漫長而昂貴的過程,通常需要數年時間和大量投資。然而,人工智慧驅動的工具使得快速分析大量生物醫學資料集成為可能。在藥物研發領域,人工智慧演算法能夠更準確地預測分子交互作用、優化先導化合物並識別潛在的候選藥物。

在基因組學研究中,人工智慧正在促進複雜基因組數據的解讀,從而能夠識別疾病相關基因並了解影響藥物反應的遺傳變異。這些進展正在加速標靶治療和個人化醫療的發展。此外,人工智慧的應用透過改善患者選擇和預測治療結果,支持更有效率的臨床試驗設計。總而言之,人工智慧在藥物研發和基因組學研究中的融合正在重塑醫療保健格局,激發創新並推動全球向精準醫療轉型。

基因組學人工智慧市場的主要成長驅動因素

基因組學人工智慧市場的成長受到多種因素的驅動,這些因素提高了基因組學研究和藥物研發的效率和準確性。新一代定序技術產生的基因組數據呈指數級增長,這催生了對能夠管理和分析複雜數據集的人工智慧工具的強勁需求。機器學習演算法能夠快速識別基因模式、預測疾病並發現藥物標靶,從而顯著降低研發成本和所需時間。

對個人化醫療日益增長的關注也是一個主要驅動因素,人工智慧有助於解讀個人基因譜,並推動開發更具針對性和更有效的治療策略。此外,計算成本的下降和數據處理基礎設施的進步正在推動人工智慧技術的廣泛應用。大型科技公司的巨額投資以及製藥和生物技術公司與人工智慧公司之間日益密切的合作,進一步加速了該領域的創新。

人工智慧在精準醫療的新應用

人工智慧透過實現數據驅動的個人化醫療,正在推動精準醫療取得重要進展。精準醫療根據個人的基因譜、生活方式和環境因素來客製化診斷和治療策略。人工智慧技術透過高效處理和解讀來自基因組定序、電子健康記錄、醫學影像、穿戴式裝置等的大量數據,為此方法提供了支持。借助機器學習演算法,人工智慧能夠發現複雜的模式和關聯,從而指導疾病的早期檢測、預測治療反應並幫助制定標靶治療方案。例如,在腫瘤學領域,人工智慧模型正被用於預測腫瘤行為、優化藥物選擇和設計個人化治療方案。人工智慧還能透過提高變異解讀的準確性和識別具有臨床應用價值的生物標記來加速基因組數據分析。此外,它還能透過放射學和病理學中的影像分析技術來提高診斷準確性。這些應用使人工智慧成為精準醫療的關鍵推動因素,能夠改善臨床決策、減少試誤治療,最終改善患者的治療效果。

本報告探討了全球基因組學人工智慧市場,並提供了市場規模估算、機會分析、競爭格局和公司概況。

目錄

第一部分:報告概述

第一章:引言

第二章:研究方法

第三章:市場動態

第四章:宏觀經濟指標

第二部分:質性研究結果

第五章:摘要整理

第六章:引言

第七章:監理環境

第三部分:市場概覽

第八章:關鍵指標綜合資料庫

第九章:競爭格局

第十章:空白市場分析

第十一章:競爭分析

第十二章:基因體學人工智慧市場的新創企業生態系統

第四部分:公司簡介

第十三章:公司簡介

  • 章節概述
  • 23andMe
  • Cradle Bio
  • Deep Genomics
  • DNAnexus
  • DNAnexus
  • Fabric Genomics
  • Gencove
  • Google DeepMind
  • IBM Watson健康
  • Immunai
  • Recursion Pharmaceuticals
  • Sophia Genetics
  • Tempus AI
  • Zebra Medical Vision

第五部分:市場趨勢

第十四章:大趨勢分析

第十五章:專利分析

第十六章:最新進展

第六部分:市場機會分析

第十七章:全球基因體學人工智慧市場

第十八章:依組件類型劃分的市場機會

第十九章:依技術劃分的市場機會

第20章:依功能類型劃分的市場機會

第21章:依應用類型劃分的市場機會

第22章:依最終使用者類型劃分的市場機會

第23章:北美人工智慧基因組學市場機會

第24章:歐洲人工智慧基因組學市場機會

第25章:亞洲人工智慧基因組學市場機會

第26章:中東和北非(MENA)市場機會

第27章:拉丁美洲人工智慧基因組學市場機會市場

第28章:全球其他地區人工智慧基因體學市場的市場機會

第29章:市場集中度分析:主要參與者

第30章:鄰近市場分析

第7節:策略工具

第31章:關鍵成功策略

第32章:波特五力分析

第33章:SWOT分析

第34章:Roots的策略建議

第8節:其他專有發現

第35章:主要研究結果

第36章:報告結論

第9節:附錄

簡介目錄
Product Code: RAD00029

Ai in Genomics Market Outlook

As per Roots Analysis, the global AI in genomics market size is estimated to grow from USD 1.97 billion in the current year to USD 317.4 billion by 2040, at a CAGR of 43.75% during the forecast period, till 2040. The new study provides market size, growth scenarios, industry trend and future forecast.

Artificial intelligence is transforming the field of genomics by processing huge datasets from DNA sequencing to reveal insights that conventional techniques overlook. Advanced technologies like next-generation sequencing produce extensive genetic data. AI applications such as machine learning and deep learning are proficient at forecasting disease risks, determining protein structures, analyzing gene expressions, and synthesizing multi-omics information for personalized medicine. This fosters quicker drug discovery, accurate genome editing through CRISPR, and customized treatments tailored to individual genetic blueprints.

The market for AI in genomics is expected to grow significantly due to the massive increase in genomic data from next-generation sequencing technologies, which outpaces traditional analysis methods and requires AI's pattern recognition capabilities.

AI in Genomics Market - IMG1

Strategic Insights for Senior Leaders

Transformative Role of Artificial Intelligence in Drug Discovery and Genomic Research

Artificial Intelligence (AI) is playing a transformative role in revolutionizing drug discovery and genomic research by enhancing efficiency, accuracy, and decision-making. Traditionally, drug development has been a lengthy and costly process, often taking several years and substantial investment; however, AI-driven tools now enable rapid analysis of vast biomedical datasets. In drug discovery, AI algorithms can predict molecular interactions, optimize lead compounds, and identify potential drug candidates with higher precision.

Within genomic research, AI facilitates the interpretation of complex genomic data, enabling the identification of disease-associated genes and the understanding of genetic variations influencing drug response. These advancements are accelerating the development of targeted and personalized therapies. Furthermore, AI applications support the design of more efficient clinical trials by improving patient selection and predicting therapeutic outcomes. Overall, the integration of AI into drug discovery and genomics is reshaping the healthcare landscape, expediting innovation, and advancing the global shift toward precision medicine.

Key Drivers Propelling Growth of AI in genomics Market

The growth of artificial intelligence (AI) in genomics market is being driven by several key factors enhancing the efficiency and accuracy of genomic research and drug discovery. The rapid increase in genomic data generated by next-generation sequencing technologies has created a strong demand for AI-based tools capable of managing and analyzing complex datasets. Machine learning algorithms are enabling faster identification of genetic patterns, disease prediction, and drug target discovery, thereby significantly reducing both cost and time in research and development.

The expanding focus on personalized medicine is another major driver, as AI supports the interpretation of individual genetic profiles to develop targeted and more effective treatment strategies. Additionally, decreasing computational costs, coupled with advancements in data processing infrastructure, have made AI technologies more accessible. Substantial investments from major technology companies and growing collaborations between pharmaceutical, biotechnology, and AI firms are further accelerating innovation in this field.

Emerging Applications of Artificial Intelligence in Precision Medicine

Artificial Intelligence (AI) is driving significant advancements in precision medicine by enabling data-driven personalization of healthcare. Precision medicine aims to tailor diagnosis and treatment strategies based on an individual's genetic profile, lifestyle, and environmental factors. AI technologies facilitate this approach by efficiently processing and interpreting large-scale data from genomic sequencing, electronic health records, medical imaging, and wearable devices. Through machine learning algorithms, AI can uncover complex patterns and correlations that inform early disease detection, predict therapeutic responses, and assist in developing targeted treatment plans. In oncology, for instance, AI models are being utilized to predict tumor behavior, optimize drug selection, and design personalized interventions. Furthermore, AI accelerates genomic data analysis by improving variant interpretation and identifying clinically relevant biomarkers. It also enhances diagnostic accuracy through image-based analytics in radiology and pathology. Collectively, these applications position AI as a key enabler of precision medicine, improving clinical decision-making, reducing trial-and-error treatments, and ultimately enhancing patient outcomes.

AI in genomics Evolution: Emerging Trends in the Industry

Artificial intelligence is revolutionizing genomics by making it faster and more accurate to analyze large genetic datasets. One major trend is multi-omics integration, where AI combines data from genomics, proteomics, and other biological sources to better understand how genes influence diseases and to identify new drug targets. Generative AI models, such as those that predict protein structures or create synthetic gene sequences, help scientists design new therapies and speed up drug discovery. Another growing area is AI-powered CRISPR, where advanced algorithms like CRISPR-GPT make gene editing safer and more precise by predicting and avoiding unwanted effects. Overall, AI is enabling more personalized treatments, improving disease prediction, and transforming how genetic research is done.

Key Market Challenges

The AI in genomics market faces several critical challenges that hinder its full-scale adoption. These include data quality and standardization issues, as genomic datasets often originate from heterogeneous sources, leading to inconsistencies and biases in model performance. Data privacy and compliance with stringent regulations, such as GDPR and HIPAA remain significant concerns due to the sensitive nature of genetic information. Additionally, the high computational costs, limited availability of skilled AI professionals, and the lack of model interpretability ("black box" problem) restrict clinical trust and integration. Collectively, these barriers continue to slow commercialization despite strong market potential.

AI In Genomics Market: Key Market Segmentation

Type of Component

  • Hardware
  • Software
  • Services

Type of Technology

  • Machine Learning
  • Computer Vision
  • Natural Language Processing
  • Others

Type of Functionality

  • Genome Sequencing
  • Gene Editing
  • Clinical Workflow Analysis
  • Predictive Genetic Testing
  • Others

Type of Application

  • Drug Discovery & Development
  • Precision Medicine
  • Diagnostics / Prognostics
  • Agriculture / Animal Genetics
  • Others

Type of End-User

  • Pharmaceutical & Biotechnology Companies
  • Healthcare Providers / Hospitals
  • Research & Academia / Government
  • CROs
  • Others

Geographical Regions

  • North America
  • US
  • Canada
  • Mexico
  • Other North American countries
  • Europe
  • Austria
  • Belgium
  • Denmark
  • France
  • Germany
  • Ireland
  • Italy
  • Netherlands
  • Norway
  • Russia
  • Spain
  • Sweden
  • Switzerland
  • UK
  • Other European countries
  • Asia
  • China
  • India
  • Japan
  • Singapore
  • South Korea
  • Other Asian countries
  • Latin America
  • Brazil
  • Chile
  • Colombia
  • Venezuela
  • Other Latin American countries
  • Middle East and North Africa
  • Egypt
  • Iran
  • Iraq
  • Israel
  • Kuwait
  • Saudi Arabia
  • UAE
  • Other MENA countries
  • Rest of the World
  • Australia
  • New Zealand
  • Other countries

Example Players in AI in Genomics Market

  • 23andMe
  • Cradle Bio
  • Deep Genomics
  • DNAnexus
  • Fabric Genomics
  • Gencove
  • Google DeepMind
  • IBM Watson Health
  • Illumina
  • Immunai
  • Lila Sciences
  • Owkin
  • Recursion Pharmaceuticals
  • Sophia Genetics
  • Tempus AI

AI In Genomics Market: Report Coverage

The report on the Ai in genomics market features insights on various sections, including:

  • Market Sizing and Opportunity Analysis: An in-depth analysis of the AI in genomics market, focusing on key market segments, including [A] type of component, [B] type of technology, [C] type of functionality, [D] type of application, [E] type of end user, [F] company size, and [G] key geographical regions
  • Competitive Landscape: A comprehensive analysis of the companies engaged in the AI in genomics market, based on several relevant parameters, such as [A] year of establishment, [B] company size, [C] location of headquarters and [D] ownership structure.
  • Company Profiles: Elaborate profiles of prominent players engaged in the AI in genomics market, providing details on [A] location of headquarters, [B] company size, [C] company mission, [D] company footprint, [E] management team, [F] contact details, [G] financial information, [H] operating business segments, [I] portfolio, [J] recent developments, and an informed future outlook.
  • Megatrends: An evaluation of ongoing megatrends in the Ai in genomics industry.
  • Patent Analysis: An insightful analysis of patents filed / granted in the AI in genomics domain, based on relevant parameters, including [A] type of patent, [B] patent publication year, [C] patent age and [D] leading players.
  • Recent Developments: An overview of the recent developments made in the AI in genomics market, along with analysis based on relevant parameters, including [A] year of initiative, [B] type of initiative, [C] geographical distribution and [D] most active players.
  • Porter's Five Forces Analysis: An analysis of five competitive forces prevailing in the AI in genomics market, including threats of new entrants, bargaining power of buyers, bargaining power of suppliers, threats of substitute products and rivalry among existing competitors.
  • SWOT Analysis: An insightful SWOT framework, highlighting the strengths, weaknesses, opportunities and threats in the domain. Additionally, it provides Harvey ball analysis, highlighting the relative impact of each SWOT parameter.

Key Questions Answered in this Report

  • What is the current and future market size?
  • Who are the leading companies in this market?
  • What are the growth drivers that are likely to influence the evolution of this market?
  • What are the key partnership and funding trends shaping this industry?
  • Which region is likely to grow at higher CAGR till 2040?
  • How is the current and future market opportunity likely to be distributed across key market segments?

Reasons to Buy this Report

  • Detailed Market Analysis: 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.
  • In-depth Analysis of Trends: Stakeholders can leverage the report to gain a deeper understanding of the competitive dynamics within the market. Each report maps ecosystem activity across partnerships, funding, and patent landscapes to reveal growth hotspots and white spaces in the industry.
  • Opinion of Industry Experts: The report features extensive interviews and surveys with key opinion leaders and industry experts to validate market trends mentioned in the report.
  • Decision-ready Deliverables: The report offers stakeholders with strategic frameworks (Porter's Five Forces, value chain, SWOT), and complimentary Excel / slide packs with customization support.

Additional Benefits

  • Complimentary Dynamic Excel Dashboards for Analytical Modules
  • Exclusive 15% Free Content Customization
  • Personalized Interactive Report Walkthrough with Our Expert Research Team
  • Free Report Updates for Versions Older than 6-12 Months

TABLE OF CONTENTS

SECTION I: REPORT OVERVIEW

1. PREFACE

  • 1.1. Introduction
  • 1.2. Market Share Insights
  • 1.3. Key Market Insights
  • 1.4. Report Coverage
  • 1.5. Key Questions Answered
  • 1.6. Chapter Outlines

2. RESEARCH METHODOLOGY

  • 2.1. Chapter Overview
  • 2.2. Research Assumptions
  • 2.3. Database Building
    • 2.3.1. Data Collection
    • 2.3.2. Data Validation
    • 2.3.3. Data Analysis
  • 2.4. Project Methodology
    • 2.4.1. Secondary Research
      • 2.4.1.1. Annual Reports
      • 2.4.1.2. Academic Research Papers
      • 2.4.1.3. Company Websites
      • 2.4.1.4. Investor Presentations
      • 2.4.1.5. Regulatory Filings
      • 2.4.1.6. White Papers
      • 2.4.1.7. Industry Publications
      • 2.4.1.8. Conferences and Seminars
      • 2.4.1.9. Government Portals
      • 2.4.1.10. Media and Press Releases
      • 2.4.1.11. Newsletters
      • 2.4.1.12. Industry Databases
      • 2.4.1.13. Roots Proprietary Databases
      • 2.4.1.14. Paid Databases and Sources
      • 2.4.1.15. Social Media Portals
      • 2.4.1.16. Other Secondary Sources
    • 2.4.2. Primary Research
      • 2.4.2.1. Introduction
      • 2.4.2.2. Types
        • 2.4.2.2.1. Qualitative
        • 2.4.2.2.2. Quantitative
      • 2.4.2.3. Advantages
      • 2.4.2.4. Techniques
        • 2.4.2.4.1. Interviews
        • 2.4.2.4.2. Surveys
        • 2.4.2.4.3. Focus Groups
        • 2.4.2.4.4. Observational Research
        • 2.4.2.4.5. Social Media Interactions
      • 2.4.2.5. Stakeholders
        • 2.4.2.5.1. Company Executives (CXOs)
        • 2.4.2.5.2. Board of Directors
        • 2.4.2.5.3. Company Presidents and Vice Presidents
        • 2.4.2.5.4. Key Opinion Leaders
        • 2.4.2.5.5. Research and Development Heads
        • 2.4.2.5.6. Technical Experts
        • 2.4.2.5.7. Subject Matter Experts
        • 2.4.2.5.8. Scientists
        • 2.4.2.5.9. Doctors and Other Healthcare Providers
      • 2.4.2.6. Ethics and Integrity
        • 2.4.2.6.1. Research Ethics
        • 2.4.2.6.2. Data Integrity
    • 2.4.3. Analytical Tools and Databases

3. MARKET DYNAMICS

  • 3.1. Forecast Methodology
    • 3.1.1. Top-Down Approach
    • 3.1.2. Bottom-Up Approach
    • 3.1.3. Hybrid Approach
  • 3.2. Market Assessment Framework
    • 3.2.1. Total Addressable Market (TAM)
    • 3.2.2. Serviceable Addressable Market (SAM)
    • 3.2.3. Serviceable Obtainable Market (SOM)
    • 3.2.4. Currently Acquired Market (CAM)
  • 3.3. Forecasting Tools and Techniques
    • 3.3.1. Qualitative Forecasting
    • 3.3.2. Correlation
    • 3.3.3. Regression
    • 3.3.4. Time Series Analysis
    • 3.3.5. Extrapolation
    • 3.3.6. Convergence
    • 3.3.7. Forecast Error Analysis
    • 3.3.8. Data Visualization
    • 3.3.9. Scenario Planning
    • 3.3.10. Sensitivity Analysis
  • 3.4. Key Considerations
    • 3.4.1. Demographics
    • 3.4.2. Market Access
    • 3.4.3. Reimbursement Scenarios
    • 3.4.4. Industry Consolidation
  • 3.5. Robust Quality Control
  • 3.6. Key Market Segmentations
  • 3.7. Limitations

4. MACRO-ECONOMIC INDICATORS

  • 4.1. Chapter Overview
  • 4.2. Market Dynamics
    • 4.2.1. Time Period
      • 4.2.1.1. Historical Trends
      • 4.2.1.2. Current and Forecasted Estimates
    • 4.2.2. Currency Coverage
      • 4.2.2.1. Overview of Major Currencies Affecting the Market
      • 4.2.2.2. Impact of Currency Fluctuations on the Industry
    • 4.2.3. Foreign Exchange Impact
      • 4.2.3.1. Evaluation of Foreign Exchange Rates and Their Impact on Market
      • 4.2.3.2. Strategies for Mitigating Foreign Exchange Risk
    • 4.2.4. Recession
      • 4.2.4.1. Historical Analysis of Past Recessions and Lessons Learnt
      • 4.2.4.2. Assessment of Current Economic Conditions and Potential Impact on the Market
    • 4.2.5. Inflation
      • 4.2.5.1. Measurement and Analysis of Inflationary Pressures in the Economy
      • 4.2.5.2. Potential Impact of Inflation on the Market Evolution
    • 4.2.6. Interest Rates
      • 4.2.6.1. Overview of Interest Rates and Their Impact on the Market
      • 4.2.6.2. Strategies for Managing Interest Rate Risk
    • 4.2.7. Commodity Flow Analysis
      • 4.2.7.1. Type of Commodity
      • 4.2.7.2. Origins and Destinations
      • 4.2.7.3. Values and Weights
      • 4.2.7.4. Modes of Transportation
    • 4.2.8. Global Trade Dynamics
      • 4.2.8.1. Import Scenario
      • 4.2.8.2. Export Scenario
    • 4.2.9. War Impact Analysis
      • 4.2.9.1. Russian-Ukraine War
      • 4.2.9.2. Israel-Hamas War
    • 4.2.10. COVID Impact / Related Factors
      • 4.2.10.1. Global Economic Impact
      • 4.2.10.2. Industry-specific Impact
      • 4.2.10.3. Government Response and Stimulus Measures
      • 4.2.10.4. Future Outlook and Adaptation Strategies
    • 4.2.11. Other Indicators
      • 4.2.11.1. Fiscal Policy
      • 4.2.11.2. Consumer Spending
      • 4.2.11.3. Gross Domestic Product (GDP)
      • 4.2.11.4. Employment
      • 4.2.11.5. Taxes
      • 4.2.11.6. R&D Innovation
      • 4.2.11.7. Stock Market Performance
      • 4.2.11.8. Supply Chain
      • 4.2.11.9. Cross-Border Dynamics

SECTION II: QUALITATIVE INSIGHTS

5. EXECUTIVE SUMMARY

6. INTRODUCTION

  • 6.1. Chapter Overview
  • 6.2. Overview of AI in Genomics Market
    • 6.2.1. Historical Evolution
    • 6.2.2. Key Applications
    • 6.2.3. Impact on Healthcare
  • 6.3. Future Perspective

7. REGULATORY SCENARIO

SECTION III: MARKET OVERVIEW

8. COMPREHENSIVE DATABASE OF LEADING PLAYERS

9. COMPETITIVE LANDSCAPE

  • 9.1. Chapter Overview
  • 9.2. AI in Genomics Market: Overall Market Landscape
    • 9.2.1. Analysis by Year of Establishment
    • 9.2.2. Analysis by Company Size
    • 9.2.3. Analysis by Location of Headquarters
    • 9.2.4. Analysis by Ownership Structure

10. WHITE SPACE ANALYSIS

11. COMPANY COMPETITIVENESS ANALYSIS

12. STARTUP ECOSYSTEM IN THE AI IN GENOMICS MARKET

  • 12.1. AI in Genomics Market: Market Landscape of Startups
    • 12.1.1. Analysis by Year of Establishment
    • 12.1.2. Analysis by Company Size
    • 12.1.3. Analysis by Company Size and Year of Establishment
    • 12.1.4. Analysis by Location of Headquarters
    • 12.1.5. Analysis by Company Size and Location of Headquarters
    • 12.1.6. Analysis by Ownership Structure
  • 12.2. Key Findings

SECTION IV: COMPANY PROFILES

13. COMPANY PROFILES

  • 13.1. Chapter Overview
  • 13.2. 23andMe*
    • 13.2.1. Company Overview
    • 13.2.2. Company Mission
    • 13.2.3. Company Footprint
    • 13.2.4. Management Team
    • 13.2.5. Contact Details
    • 13.2.6. Financial Performance
    • 13.2.7. Operating Business Segments
    • 13.2.8. Service / Product Portfolio (project specific)
    • 13.2.9. MOAT Analysis
    • 13.2.10. Recent Developments and Future Outlook
  • 13.3. Cradle Bio
  • 13.4. Deep Genomics
  • 13.5. DNAnexus
  • 13.6. DNAnexus
  • 13.7. Fabric Genomics
  • 13.8. Gencove
  • 13.9. Google DeepMind
  • 13.10. IBM Watson Health
  • 13.11. Immunai
  • 13.12. Recursion Pharmaceuticals
  • 13.13. Sophia Genetics
  • 13.14. Tempus AI
  • 13.15. Zebra Medical Vision

SECTION V: MARKET TRENDS

14. MEGA TRENDS ANALYSIS

15. PATENT ANALYSIS

16. RECENT DEVELOPMENTS

  • 16.1. Chapter Overview
  • 16.2. Recent Funding
  • 16.3. Recent Partnerships
  • 16.4. Other Recent Initiatives

SECTION VI: MARKET OPPORTUNITY ANALYSIS

17. GLOBAL AI IN GENOMICS MARKET

  • 17.1. Chapter Overview
  • 17.2. Key Assumptions and Methodology
  • 17.3. Trends Disruption Impacting Market
  • 17.4. Demand Side Trends
  • 17.5. Supply Side Trends
  • 17.6. Global AI in Genomics Market, Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 17.7. Multivariate Scenario Analysis
    • 17.7.1. Conservative Scenario
    • 17.7.2. Optimistic Scenario
  • 17.8. Investment Feasibility Index
  • 17.9. Key Market Segmentations

18. MARKET OPPORTUNITIES BASED ON TYPE OF COMPONENT

  • 18.1. Chapter Overview
  • 18.2. Key Assumptions and Methodology
  • 18.3. Revenue Shift Analysis
  • 18.4. Market Movement Analysis
  • 18.5. Penetration-Growth (P-G) Matrix
  • 18.6. AI in Genomics Market for Software: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 18.7. AI in Genomics Market for Hardware: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 18.8. AI in Genomics Market for Services: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 18.9. Data Triangulation and Validation
    • 18.9.1. Secondary Sources
    • 18.9.2. Primary Sources
    • 18.9.3. Statistical Modeling

19. MARKET OPPORTUNITIES BASED ON TYPE OF TECHNOLOGY

  • 19.1. Chapter Overview
  • 19.2. Key Assumptions and Methodology
  • 19.3. Revenue Shift Analysis
  • 19.4. Market Movement Analysis
  • 19.5. Penetration-Growth (P-G) Matrix
  • 19.6. AI in Genomics Market for Machine Learning: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 19.7. AI in Genomics Market for Computer Vision: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 19.8. AI in Genomics Market for Natural Language Processing: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 19.9. AI in Genomics Market for Others: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 19.10. Data Triangulation and Validation
    • 19.10.1. Secondary Sources
    • 19.10.2. Primary Sources
    • 19.10.3. Statistical Modeling

20. MARKET OPPORTUNITIES BASED ON TYPE OF FUNCTIONALITY

  • 20.1. Chapter Overview
  • 20.2. Key Assumptions and Methodology
  • 20.3. Revenue Shift Analysis
  • 20.4. Market Movement Analysis
  • 20.5. Penetration-Growth (P-G) Matrix
  • 20.6. AI in Genomics Market for Genome Sequencing: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 20.7. AI in Genomics Market for Gene Editing: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 20.8. AI in Genomics Market for Clinical Workflow Analysis: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 20.8. AI in Genomics Market for Predictive Genetic Testing: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 20.8. AI in Genomics Market for Others: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 20.9. Data Triangulation and Validation
    • 20.9.1. Secondary Sources
    • 20.9.2. Primary Sources
    • 20.9.3. Statistical Modeling

21. MARKET OPPORTUNITIES BASED ON TYPE OF APPLICATION

  • 21.1. Chapter Overview
  • 21.2. Key Assumptions and Methodology
  • 21.3. Revenue Shift Analysis
  • 21.4. Market Movement Analysis
  • 21.5. Penetration-Growth (P-G) Matrix
  • 21.6. AI in Genomics Market for Drug Discovery & Development: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 21.7. AI in Genomics Market for Precision Medicine: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 21.8. AI in Genomics Market for Diagnostics / Prognostics: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 21.9. AI in Genomics Market for Agriculture / Animal Genetics: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 21.10. AI in Genomics Market for Others: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 21.11. Data Triangulation and Validation
    • 21.11.1. Secondary Sources
    • 21.11.2. Primary Sources
    • 21.11.3. Statistical Modeling

22. MARKET OPPORTUNITIES BASED ON TYPE OF END-USER

  • 22.1. Chapter Overview
  • 22.2. Key Assumptions and Methodology
  • 22.3. Revenue Shift Analysis
  • 22.4. Market Movement Analysis
  • 22.5. Penetration-Growth (P-G) Matrix
  • 22.6. AI in Genomics Market for Pharmaceutical & Biotechnology Companies: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 22.7. AI in Genomics Market for Healthcare Providers / Hospitals: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 22.8. AI in Genomics Market for Research & Academia / Government: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 22.9. AI in Genomics Market for CROs: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 22.10. AI in Genomics Market for Others: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 22.11. Data Triangulation and Validation
    • 22.11.1. Secondary Sources
    • 22.11.2. Primary Sources
    • 22.11.3. Statistical Modeling

23. MARKET OPPORTUNITIES FOR AI IN GENOMICS MARKET IN NORTH AMERICA

  • 23.1. Chapter Overview
  • 23.2. Key Assumptions and Methodology
  • 23.3. Revenue Shift Analysis
  • 23.4. Market Movement Analysis
  • 23.5. Penetration-Growth (P-G) Matrix
  • 23.6. AI in Genomics Market in North America: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 23.6.1. AI in Genomics Market in the US: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 23.6.2. AI in Genomics Market in Canada: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 23.6.3. AI in Genomics Market in Mexico: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 23.6.4. AI in Genomics Market in Other North American Countries: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 23.7. Data Triangulation and Validation

24. MARKET OPPORTUNITIES FOR AI IN GENOMICS MARKET IN EUROPE

  • 24.1. Chapter Overview
  • 24.2. Key Assumptions and Methodology
  • 24.3. Revenue Shift Analysis
  • 24.4. Market Movement Analysis
  • 24.5. Penetration-Growth (P-G) Matrix
  • 24.6. AI in Genomics Market in Europe: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.1. AI in Genomics Market in Austria: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.2. AI in Genomics Market in Belgium: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.3. AI in Genomics Market in Denmark: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.4. AI in Genomics Market in France: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.5. AI in Genomics Market in Germany: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.6. AI in Genomics Market in Ireland: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.7. AI in Genomics Market in Italy: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.8. AI in Genomics Market in Netherlands: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.9. AI in Genomics Market in Norway: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.10. AI in Genomics Market in Russia: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.11. AI in Genomics Market in Spain: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.12. AI in Genomics Market in Sweden: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.13. AI in Genomics Market in Switzerland: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.14. AI in Genomics Market in the UK: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 24.6.15. AI in Genomics Market in Other European Countries: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 24.7. Data Triangulation and Validation

25. MARKET OPPORTUNITIES FOR AI IN GENOMICS MARKET IN ASIA

  • 25.1. Chapter Overview
  • 25.2. Key Assumptions and Methodology
  • 25.3. Revenue Shift Analysis
  • 25.4. Market Movement Analysis
  • 25.5. Penetration-Growth (P-G) Matrix
  • 25.6. AI in Genomics Market in Asia: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 25.6.1. AI in Genomics Market in China: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 25.6.2. AI in Genomics Market in India: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 25.6.3. AI in Genomics Market in Japan: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 25.6.4. AI in Genomics Market in Singapore: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 25.6.5. AI in Genomics Market in South Korea: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 25.6.6. AI in Genomics Market in Other Asian Countries: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 25.7. Data Triangulation and Validation

26. MARKET OPPORTUNITIES FOR AI IN GENOMICS MARKET IN MIDDLE EAST AND NORTH AFRICA (MENA)

  • 26.1. Chapter Overview
  • 26.2. Key Assumptions and Methodology
  • 26.3. Revenue Shift Analysis
  • 26.4. Market Movement Analysis
  • 26.5. Penetration-Growth (P-G) Matrix
  • 26.6. AI in Genomics Market in Middle East and North Africa (MENA): Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 26.6.1. AI in Genomics Market in Egypt: Historical Trends (Since 2020) and Forecasted Estimates (Till 205)
    • 26.6.2. AI in Genomics Market in Iran: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 26.6.3. AI in Genomics Market in Iraq: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 26.6.4. AI in Genomics Market in Israel: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 26.6.5. AI in Genomics Market in Kuwait: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 26.6.6. AI in Genomics Market in Saudi Arabia: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 26.6.7. AI in Genomics Market in United Arab Emirates (UAE): Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 26.6.8. AI in Genomics Market in Other MENA Countries: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 26.7. Data Triangulation and Validation

27. MARKET OPPORTUNITIES FOR AI IN GENOMICS MARKET IN LATIN AMERICA

  • 27.1. Chapter Overview
  • 27.2. Key Assumptions and Methodology
  • 27.3. Revenue Shift Analysis
  • 27.4. Market Movement Analysis
  • 27.5. Penetration-Growth (P-G) Matrix
  • 27.6. AI in Genomics Market in Latin America: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 27.6.1. AI in Genomics Market in Argentina: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 27.6.2. AI in Genomics Market in Brazil: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 27.6.3. AI in Genomics Market in Chile: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 27.6.4. AI in Genomics Market in Colombia Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 27.6.5. AI in Genomics Market in Venezuela: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 27.6.6. AI in Genomics Market in Other Latin American Countries: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
  • 27.7. Data Triangulation and Validation

28. MARKET OPPORTUNITIES FOR AI IN GENOMICS MARKET IN REST OF THE WORLD

  • 28.1. Chapter Overview
  • 28.2. Key Assumptions and Methodology
  • 28.3. Revenue Shift Analysis
  • 28.4. Market Movement Analysis
  • 28.5. Penetration-Growth (P-G) Matrix
  • 28.6. AI in Genomics Market in Rest of the World: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 28.6.1. AI in Genomics Market in Australia: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 28.6.2. AI in Genomics Market in New Zealand: Historical Trends (Since 2020) and Forecasted Estimates (Till 2040)
    • 28.6.3. AI in Genomics Market in Other Countries
  • 28.7. Data Triangulation and Validation

29. MARKET CONCENTRATION ANALYSIS: DISTRIBUTION BY LEADING PLAYERS

  • 29.1. Leading Player 1
  • 29.2. Leading Player 2
  • 29.3. Leading Player 3
  • 29.4. Leading Player 4
  • 29.5. Leading Player 5
  • 29.6. Leading Player 6
  • 29.7. Leading Player 7
  • 29.8. Leading Player 8

30. ADJACENT MARKET ANALYSIS

SECTION VII: STRATEGIC TOOLS

31. KEY WINNING STRATEGIES

32. PORTER'S FIVE FORCES ANALYSIS

33. SWOT ANALYSIS

34. ROOTS STRATEGIC RECOMMENDATIONS

  • 34.1. Chapter Overview
  • 34.2. Key Business-related Strategies
    • 34.2.1. Research & Development
    • 34.2.2. Product Manufacturing
    • 34.2.3. Commercialization / Go-to-Market
    • 34.2.4. Sales and Marketing
  • 34.3. Key Operations-related Strategies
    • 34.3.1. Risk Management
    • 34.3.2. Workforce
    • 34.3.3. Finance
    • 34.3.4. Others

SECTION VIII: OTHER EXCLUSIVE INSIGHTS

35. INSIGHTS FROM PRIMARY RESEARCH

36. REPORT CONCLUSION

SECTION IX: APPENDIX

37. TABULATED DATA

38. LIST OF COMPANIES AND ORGANIZATIONS

39. ROOTS SUBSCRIPTION SERVICES

40. AUTHOR DETAILS