AI-based Digital Pathology Market SIZE AND SHARE ANALYSIS - GROWTH TRENDS AND FORECASTS (2024 - 2031)

AI-based Digital Pathology Market is Segmented By End-Users (Academic Institutions, Hospitals / Healthcare Institutions, Laboratories, Diagnostic Institutions, Research Institutions), By Area of Application (Diagnostics, Research, Other Applications), By Geography (North America, Latin America, Europe, Asia Pacific, Middle East & Africa). The report offers the value (in USD Billion) for the above-mentioned segments.

AI-based Digital Pathology Market Size

Market Size in USD Bn

CAGR8.3%

Study Period2024 - 2031
Base Year of Estimation2023
CAGR8.3%
Market ConcentrationHigh
Major PlayersAiforia Technologies, Akoya Biosciences, Ibex Medical Analytics, Indica Labs, PathAI and Among Others.
*Disclaimer: Major players are listed in no particular order.
*Source: Coherent Market Insights
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AI-based Digital Pathology Market Analysis

The AI-based digital pathology market is estimated to be valued at USD 1.1 Bn in 2024 and is expected to reach USD 1.8 Bn by 2031, growing at a compound annual growth rate (CAGR) of 8.3% from 2024 to 2031. The increasing incorporation of AI and digitization of pathology workflows along with the demand for more accurate and faster diagnosis is fueling the growth of this market.

The market is witnessing positive trends with the increasing adoption of digital pathology to enhance workflow efficiency in healthcare facilities. Key players are investing in development of more advanced AI and machine learning-based algorithms and systems to gain major share. Several hospitals and diagnostic centers are also replacing traditional microscopy with digital pathology to meet growing diagnosis needs.

AI-based Digital Pathology Market Trends

Market Driver - Increasing adoption of AI-driven diagnostic tools in pathology

Pathologists are increasingly adopting AI-driven diagnostic tools to enhance their workflow and deliver more accurate diagnoses. Histopathological image analysis involves examining tissue slides under a microscope to detect diseases. However, manually analyzing hundreds of high-resolution images in a short period of time is a tedious and error-prone process. Moreover, the accuracy depends greatly on the pathologist's experience and fatigue levels. Artificial intelligence has demonstrated the ability to analyze digital pathology images much faster than humans and detect subtle visual patterns that may be missed by the naked eye. Several startups and large technology companies are now developing AI-based systems that can be trained on vast image datasets to recognize complex morphological features. Once validated in clinical settings, these tools are expected to significantly augment pathologists' diagnostic capabilities.

Many early adopters have reported reduction in diagnostic review time and improvement in consistency of reports through AI applications. For example, a pioneering study showed that an AI system could analyze whole slide images of biopsy samples and accurately detect breast cancer with a level of expertise comparable to experienced pathologists. This helped pathologists to prioritize difficult cases needing their urgent review. In another study, an AI-powered virtual microscope read prostate biopsies for Gleason grading of prostate cancer faster than pathologists usually do without compromising on accuracy. Such proven advantages are compelling hospitals and diagnostic laboratories to invest in digital pathology workflow along with AI-based algorithms. Vendors are also optimizing their platforms to seamlessly integrate with Laboratory Information Systems as well as Electronic Health Records for better clinical decision making.

Market Driver - Rising prevalence of chronic diseases necessitating advanced diagnostic solutions

Chronic diseases such as cancer, cardiovascular disease, and diabetes have been rising worldwide owing to aging populations and changing lifestyles. Cancer incidence alone is projected to continue increasing significantly in the coming decades. Treatment and management of chronic conditions puts a tremendous strain on healthcare systems both financially as well as in terms of workforce requirements. At the same time, early detection through accurate diagnostics can notably improve health outcomes in many chronic diseases. This necessitates pathology laboratories to examine an ever-growing number of samples routinely while maintaining highest standards of quality and turnaround time. AI applications are well-suited to help address these challenges by enhancing the efficiency and effectiveness of diagnostic workflows.

Advanced machine learning algorithms can extract insights from complex pathological images more objectively than humans to support early-stage cancer screening programs. Similarly, AI tools can help clinicians arrive at faster treatment decisions for heart disease patients through computational analysis of digitized cardiovascular tissue slides. Apart from aiding primary diagnosis, AI also enables computer-aided prognosis and monitoring of treatment responses in chronic conditions over time based on longitudinal health records. This presents opportunities for more personalized care approaches. Diagnostic labs, therefore, are proactively evaluating AI-powered digital solutions to scale their operations cost-effectively to cope with rising chronic disease case volumes while continuing to deliver expert levels of accuracy and reliability expected in healthcare.

AI-based Digital Pathology Market Key Factors

Market Challenge - High costs associated with AI-based pathology systems

One of the major challenges currently impacting the growth of the AI-based digital pathology market is the high costs associated with implementing such systems. Setting up whole slide imaging systems and the accompanying AI and computing infrastructure requires a significant capital expenditure that many hospitals and labs, especially those in smaller centers or developing countries, may not be able to afford currently. The need to digitize entire histopathology slide libraries retroactively also contributes to making these systems expensive to deploy initially. While the long term operational costs in terms of labor and consumables are reduced with digital pathology, persuading stakeholders to make such a large upfront investment continues to be challenging. The returns on such investments may also not be immediately clear. Affordability issues are thus a critical roadblock that needs to be addressed in order to allow broader adoption of this promising technology globally. Training pathologists and labs in handling and interpreting digital images also contributes to increased costs.

Market Opportunity - Expansion of AI applications in emerging markets

However, there also exists robust opportunities for the growth of AI-based digital pathology solutions. One such opportunity lies in the expansion of AI applications to emerging markets. While developed economies in the West have seen initial uptake of such technology, often spearheaded by major cancer centers and research hospitals, emerging markets remain relatively untapped. These regions are experiencing growing disease burdens such as cancer but face challenges such as shortage of pathologists and lack of resources.

AI and digital pathology offer the promise of improving efficiency, turnaround times, and accuracy of diagnosis. Vendors can focus on developing more affordable and customized solutions as well as translational research applicable to the public health needs and healthcare infrastructure in developing countries. This will allow the technology to reach regions with highest potential impact, driving volumes and revenues in the long run. Partnerships with local stakeholders will be important to facilitate customized adoption approaches. Emerging markets thus present a substantial opportunity area for continued growth of the digital pathology domain.

Key winning strategies adopted by key players of AI-based Digital Pathology Market

Players have focused on continuous innovation in their product offerings to provide improved diagnostics and analysis capabilities. For example, Philips introduced IntelliSite Pathology Solution in 2019, which uses AI and deep learning algorithms to analyze digital pathology images and extract quantitative data to assist pathologists. This solution analyzes whole slide images up to 50x faster than conventional methods.

Companies have partnered with pathology labs, hospitals and research institutions to advance the use of AI digital pathology and validate their solutions. For example, in 2020, Proscia partnered with The Johns Hopkins Hospital to deploy its AI image analysis platform, Cortex, across their pathology network. Such partnerships help accelerate clinical adoption and validation of AI solutions.

Leading players have acquired startups working on innovative AI and digital pathology solutions to enhance their product portfolios. For example, in 2019, Philips acquired IntelliSite to strengthen its position in precision diagnosis business using AI and machine learning. Similarly, Roche Diagnostics acquired Ventana Medical Systems in 2019, a leader in tissue-based cancer diagnosis, to integrate digital pathology and AI into their offerings.

Companies are focusing on expanding their geographical footprint, especially in high growth markets like Asia Pacific and Middle East, to capitalize on increasing demand. For instance, Nikon’s digital pathology business unit increased its international business by 25% in 2021 by expanding to countries like China, Brazil and India.

Segmental Analysis of AI-based Digital Pathology Market

Insights, By End-Users: Increased focus on advanced medical education and research

In terms of end-users, academic institutions sub-segment contributes the highest share of 28.3% in the market owing to increased focus on advanced medical education and research. Integration of AI and advanced imaging techniques into curriculum and research projects has resulted in accelerated adoption of associated technologies.

A major factor propelling academic institutions segment is the need to impart hands-on experience and exposure to latest diagnostic practices to students. AI-based digital pathology solutions allow easy sharing of cases between faculty members and students which enhances learning outcomes. Adoption helps upgrade laboratory infrastructure as well as diagnostic capabilities of affiliated hospitals.

Growing public-private partnerships encourage academic centers to modernize facilities for collaborative research. AI algorithms developed using large datasets can be utilized to study disease mechanisms and boost efficacy of new drug development process. Research grants from government as well as private players promote equipping labs with cutting-edge tools. Integration of digital assets also aids publication of landmark studies.

Rising competitive pressure motivates institutions to focus on differentiating education programs. Advanced training in AI-powered analysis improves employability of graduates in rapidly evolving healthcare industry. Positive reputation boost associated with innovative research attracts talent as well as external funding. This establishes long term advantage over counterparts with conventional methodologies.

AI-based Digital Pathology Market By Segmentation

Insights, By Area of Application: Benefits in workflow optimization and improved clinical decision making

In terms of area of application, diagnostics sub-segment contributes the highest share of 48.2% in the market owing to benefits in workflow optimization and improved clinical decision making. Diagnostics form the major application area for AI-based digital pathology owing to benefits in optimization of workflow as well as clinical decision-making process. Transition from conventional microscopic analysis to automated image scanning and interpretation improves efficiency multifold.

Pathologists are able to rapidly scan huge volume of slides and concentrate only on cases that warrant detailed evaluation. AI prioritizes urgent/suspicious cases to top of workflow. This ensures on-time reviews and reporting without compromising accuracy. Streamlined workflow allows optimal utilization of limited diagnostic resources.

Advanced AI algorithms match stained slide patterns to vast dataset of known disease characteristics with very high accuracy. Computer-assisted diagnosis augments diagnostic abilities of pathologists. Integration of patient history data further enhances clinical context. This fosters more consistent and objective diagnosis even for rare or complex cases.

AI solutions also enable quantitative analysis of biomarkers/indicators and generation of detailed reports. Standardization achieved through digitization and automation of quantitative methods aids multidisciplinary care decisions. Retrospective analysis of archival data or sequential samples is easy using AI-powered search tools.

In view of above advantages in turnaround time reduction, workload management, diagnostic consistency and treatment tracking - diagnostic application segment dominates AI-based digital pathology market currently and adoption is expected to accelerate further with improving accuracy and capabilities of deep learning models.

Additional Insights of AI-based Digital Pathology Market

  • The integration of AI in digital pathology is transforming traditional workflows, enabling more accurate diagnoses and efficient processing of pathology images. The trend of leveraging AI for automated image analysis is expected to continue driving market growth. Companies are increasingly adopting AI-powered solutions to stay competitive, and the market is anticipated to witness significant technological advancements over the next decade.

Competitive overview of AI-based Digital Pathology Market

The major players operating in the AI-based digital pathology market include Aiforia Technologies, Akoya Biosciences, Ibex Medical Analytics, Indica Labs, PathAI, PROSCIA, Roche Tissue Diagnostics, and Visiopharm.

AI-based Digital Pathology Market Leaders

  • Aiforia Technologies
  • Akoya Biosciences
  • Ibex Medical Analytics
  • Indica Labs
  • PathAI
*Disclaimer: Major players are listed in no particular order.

AI-based Digital Pathology Market - Competitive Rivalry, 2023

Market Concentration Graph

AI-based Digital Pathology Market

Market Consolidated
(Dominated by major players)
Market Fragmented
(Highly competitive with lots of players.)
*Source: Coherent Market Insights

Recent Developments in AI-based Digital Pathology Market

  • In February 2024, Roche announced a partnership with PathAI to enhance digital pathology capabilities, focusing on developing companion diagnostics using AI-powered image analysis. This collaboration is expected to significantly impact the efficiency and accuracy of diagnostics.

AI-based Digital Pathology Market Report - Table of Contents

  1. RESEARCH OBJECTIVES AND ASSUMPTIONS
    • Research Objectives
    • Assumptions
    • Abbreviations
  2. MARKET PURVIEW
    • Report Description
      • Market Definition and Scope
    • Executive Summary
      • AI-based Digital Pathology Market, By End-Users
      • AI-based Digital Pathology Market, By Area of Application
    • Coherent Opportunity Map (COM)
  3. MARKET DYNAMICS, REGULATIONS, AND TRENDS ANALYSIS
    • Market Dynamics
    • Impact Analysis
    • Key Highlights
    • Regulatory Scenario
    • Product Launches/Approvals
    • PEST Analysis
    • PORTER’s Analysis
    • Merger and Acquisition Scenario
  4. Global AI-based Digital Pathology Market, By End-Users, 2024-2031, (USD Bn)
    • Introduction
      • Market Share Analysis, 2024 and 2031 (%)
      • Y-o-Y Growth Analysis, 2019 - 2031
      • Segment Trends
    • Academic Institutions
      • Introduction
      • Market Size and Forecast, and Y-o-Y Growth, 2019-2031, (USD Bn)
    • Hospitals / Healthcare Institutions
      • Introduction
      • Market Size and Forecast, and Y-o-Y Growth, 2019-2031, (USD Bn)
    • Laboratories
      • Introduction
      • Market Size and Forecast, and Y-o-Y Growth, 2019-2031, (USD Bn)
    • Diagnostic Institutions
      • Introduction
      • Market Size and Forecast, and Y-o-Y Growth, 2019-2031, (USD Bn)
    • Research Institutions
      • Introduction
      • Market Size and Forecast, and Y-o-Y Growth, 2019-2031, (USD Bn)
  5. Global AI-based Digital Pathology Market, By Area of Application, 2024-2031, (USD Bn)
    • Introduction
      • Market Share Analysis, 2024 and 2031 (%)
      • Y-o-Y Growth Analysis, 2019 - 2031
      • Segment Trends
    • Diagnostics
      • Introduction
      • Market Size and Forecast, and Y-o-Y Growth, 2019-2031, (USD Bn)
    • Research
      • Introduction
      • Market Size and Forecast, and Y-o-Y Growth, 2019-2031, (USD Bn)
    • Other Applications
      • Introduction
      • Market Size and Forecast, and Y-o-Y Growth, 2019-2031, (USD Bn)
  6. Global AI-based Digital Pathology Market, By Region, 2024-2031, Value (USD Bn)
    • Introduction
      • Market Share (%) Analysis, 2024,2027 & 2031, Value (USD Bn)
      • Market Y-o-Y Growth Analysis (%), 2019 - 2031, Value (USD Bn)
      • Regional Trends
    • North America
      • Introduction
      • Market Size and Forecast, By End-Users , 2019 - 2031, Value (USD Bn)
      • Market Size and Forecast, By Area of Application , 2019 - 2031, Value (USD Bn)
        • U.S.
        • Canada
    • Latin America
      • Introduction
      • Market Size and Forecast, By End-Users , 2019 - 2031, Value (USD Bn)
      • Market Size and Forecast, By Area of Application , 2019 - 2031, Value (USD Bn)
        • Brazil
        • Argentina
        • Mexico
        • Rest of Latin America
    • Europe
      • Introduction
      • Market Size and Forecast, By End-Users , 2019 - 2031, Value (USD Bn)
      • Market Size and Forecast, By Area of Application , 2019 - 2031, Value (USD Bn)
        • Germany
        • U.K.
        • Spain
        • France
        • Italy
        • Russia
        • Rest of Europe
    • Asia Pacific
      • Introduction
      • Market Size and Forecast, By End-Users , 2019 - 2031, Value (USD Bn)
      • Market Size and Forecast, By Area of Application , 2019 - 2031, Value (USD Bn)
        • China
        • India
        • Japan
        • Australia
        • South Korea
        • ASEAN
        • Rest of Asia Pacific
    • Middle East
      • Introduction
      • Market Size and Forecast, By End-Users , 2019 - 2031, Value (USD Bn)
      • Market Size and Forecast, By Area of Application , 2019 - 2031, Value (USD Bn)
        • GCC Countries
        • Israel
        • Rest of Middle East
    • Africa
      • Introduction
      • Market Size and Forecast, By End-Users , 2019 - 2031, Value (USD Bn)
      • Market Size and Forecast, By Area of Application , 2019 - 2031, Value (USD Bn)
        • South Africa
        • North Africa
        • Central Africa
  7. COMPETITIVE LANDSCAPE
    • Aiforia Technologies
      • Company Highlights
      • Product Portfolio
      • Key Developments
      • Financial Performance
      • Strategies
    • Akoya Biosciences
      • Company Highlights
      • Product Portfolio
      • Key Developments
      • Financial Performance
      • Strategies
    • Ibex Medical Analytics
      • Company Highlights
      • Product Portfolio
      • Key Developments
      • Financial Performance
      • Strategies
    • Indica Labs
      • Company Highlights
      • Product Portfolio
      • Key Developments
      • Financial Performance
      • Strategies
    • PathAI
      • Company Highlights
      • Product Portfolio
      • Key Developments
      • Financial Performance
      • Strategies
    • PROSCIA
      • Company Highlights
      • Product Portfolio
      • Key Developments
      • Financial Performance
      • Strategies
    • Roche Tissue Diagnostics
      • Company Highlights
      • Product Portfolio
      • Key Developments
      • Financial Performance
      • Strategies
    • Visiopharm
      • Company Highlights
      • Product Portfolio
      • Key Developments
      • Financial Performance
      • Strategies
  8. Analyst Recommendations
    • Wheel of Fortune
    • Analyst View
    • Coherent Opportunity Map
  9. References and Research Methodology
    • References
    • Research Methodology
    • About us

AI-based Digital Pathology Market Segmentation

  • By End-Users
    • Academic Institutions
    • Hospitals / Healthcare Institutions
    • Laboratories
    • Diagnostic Institutions
    • Research Institutions
  • By Area of Application
    • Diagnostics
    • Research
    • Other Applications
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Frequently Asked Questions :

What are the key factors hampering the growth of the AI-based digital pathology market?

The high costs associated with ai-based pathology systems and lack of expertise in ai technology among pathologists are the major factors hampering the growth of the AI-based digital pathology market.

What are the major factors driving the AI-based digital pathology market growth?

Which is the leading end-user in the AI-based digital pathology market?

Which are the major players operating in the AI-based digital pathology market?

What will be the CAGR of the AI-based digital pathology market?