Growth Opportunities and Innovative Use Cases for AI in Clinical Trials

Growth Opportunities and Innovative Use Cases for AI in Clinical Trials

Integrating Real-world Insights into Intelligent Platforms to Enable Patient-centric Trial Design

RELEASE DATE
21-Dec-2022
REGION
North America
Research Code: PDA0-01-00-00-00
SKU: HC03609-GL-MR_27200
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Description

As clinical pipelines globally witness a surge in novel complex therapies, the clinical trial industry demands new tools in predictive analytics to improve trial design, planning, and execution. Artificial intelligence is gaining large-scale recognition as support for decentralized trial designs, thus enabling patient-centric clinical trial designs. The rapid adoption of AI/ML algorithms and platforms to structure and utilize electronic health records (EHRs) allows the industry to tap into a vast, rich, and highly relevant data source that holds tremendous potential in improving the global clinical trial landscape.

Incorporating integrated AI-driven solutions in clinical trial design and patient retention will ease the go-to-market strategy for various CROs and pharma players as they will reduce costs, increase efficiency, and support the transition to decentralized trials by means of remote patient recruitment, management, as well as engagement through interactive platforms thus ensuring higher retention. Additionally, these platforms are highly beneficial in the selection of appropriate investigators and trial sites. Randomized control trials (RCTs) are another possible application for sponsors to leverage AI in analyzing vast site-level datasets for greater insight into trial design and implementation.

Leading CROs such as Syneos Health or IQVIA, as well as several pharmaceutical companies such as BMS, have successfully deployed AI-based platforms to support site selection and patient recruitment. Companies (including AstraZeneca and Novartis among others) are also applying AI in clinical trials to enable the optimization of different stages with the intent of reducing the overall trial timelines.
AI technologies bring fundamental innovations for transforming clinical trials, such as collecting and analyzing real-world data, seamlessly combining phases I and II of clinical trials, and developing novel patient-centered endpoints. AI can be leveraged to create standardized, structured, and digital data elements from a range of inputs, and as AI-enabled study design helps optimize and accelerate the creation of patient-centric designs, it significantly reduces patient burden, increases the likelihood of success, decreases the number of amendments, and improves the overall efficiency of trials. Together, big technology providers and pharmaceutical start-ups are setting the course for more effective clinical trials in the future.

Key Issues Addressed

  • What are the key trends impacting the clinical trial industry in terms of technology implementation?
  • What are the various application areas for AI in terms of execution of clinical trials?
  • Who are some of the key industry stakeholders building cutting-edge AI enabled platforms?
  • What are the industry drivers and barriers impacting the AI enabled clinical trial industry?
  • What are the key strategies global stakeholders are taking to better serve customers while ensuring growth?
  • What are the key growth opportunities going forward and call to action for CROs, sponsors and technology participants in the ecosystem?

Author: Aarti Siddhesh Chitale

Table of Contents

Why Is It Increasingly Difficult to Grow?

The Strategic Imperative 8™

The Impact of the Top 3 Strategic Imperatives on Artificial Intelligence (AI) in the Clinical Trials Industry

Growth Opportunities Fuel the Growth Pipeline Engine™

Scope of Analysis

Definitions

Segmentation

The Top 3 Clinical Trial Challenges

The AI Value Proposition in Clinical Trials

Why AI Is Critical for Trial Success

The Patient Journey Through AI-enabled Clinical Trials

Growth Drivers

Growth Restraints

Regulatory Scenario—AI Use in Clinical Trials

Vendor Ecosystem

AI in Clinical Trials—Companies-to-Action (C2A) Targets

AI in Clinical Trials—Adoption Timeline and Impact

AI Applications in Clinical Trial Design

Vendor Spotlight—Owkin

Industry Use Case and Analyst Perspective

Vendor Spotlight—ConcertAI

Industry Use Case and Analyst Perspective

Other AI Vendors in Clinical Trial Design

AI Application in Patient Enrichment, Recruitment, and Enrollment

Vendor Spotlight—Unlearn

Industry Use Case and Analyst Perspective

Vendor Spotlight—TrialWire

Analyst Perspective

Other AI Vendors for Patient Enrichment, Recruitment, and Enrollment

AI Application in Patient Monitoring, Adherence, and Retention

Vendor Spotlight—AiCure

Industry Use Case and Analyst Perspective

Vendor Spotlight—AWS

Industry Use Case and Analyst Perspective

Other AI Vendors for Patient Monitoring, Adherence, and Retention

AI Applications in Investigator and Site Selection

Vendor Spotlight—Medidata AcornAI

Industry Use Case and Analyst Perspective

Vendor Spotlight—Deep 6 AI

Industry Use Case and Analyst Perspective

Other AI Vendors for Investigator and Site Selection

Other Companies to Watch

Other Companies to Watch (continued)

Growth Opportunity 1—Remote Recruitment to Expand Patient Diversity for Cancer Trials

Growth Opportunity 1—Remote Recruitment to Expand Patient Diversity for Cancer Trials (continued)

Growth Opportunity 2—Patient-centric Clinical Trial Design for Better Retention and Monitoring

Growth Opportunity 2—Patient-centric Clinical Trial Design for Better Retention and Monitoring (continued)

Growth Opportunity 3—AI-integrated Cloud-based SaaS Delivery Models

Growth Opportunity 3—AI-integrated Cloud-based SaaS Delivery Models (continued)

List of Exhibits

Legal Disclaimer

As clinical pipelines globally witness a surge in novel complex therapies, the clinical trial industry demands new tools in predictive analytics to improve trial design, planning, and execution. Artificial intelligence is gaining large-scale recognition as support for decentralized trial designs, thus enabling patient-centric clinical trial designs. The rapid adoption of AI/ML algorithms and platforms to structure and utilize electronic health records (EHRs) allows the industry to tap into a vast, rich, and highly relevant data source that holds tremendous potential in improving the global clinical trial landscape. Incorporating integrated AI-driven solutions in clinical trial design and patient retention will ease the go-to-market strategy for various CROs and pharma players as they will reduce costs, increase efficiency, and support the transition to decentralized trials by means of remote patient recruitment, management, as well as engagement through interactive platforms thus ensuring higher retention. Additionally, these platforms are highly beneficial in the selection of appropriate investigators and trial sites. Randomized control trials (RCTs) are another possible application for sponsors to leverage AI in analyzing vast site-level datasets for greater insight into trial design and implementation. Leading CROs such as Syneos Health or IQVIA, as well as several pharmaceutical companies such as BMS, have successfully deployed AI-based platforms to support site selection and patient recruitment. Companies (including AstraZeneca and Novartis among others) are also applying AI in clinical trials to enable the optimization of different stages with the intent of reducing the overall trial timelines. AI technologies bring fundamental innovations for transforming clinical trials, such as collecting and analyzing real-world data, seamlessly combining phases I and II of clinical trials, and developing novel patient-centered endpoints. AI can be leveraged to create standardized, structured, and digital data elements from a range of inputs, and as AI-enabled study design helps optimize and accelerate the creation of patient-centric designs, it significantly reduces patient burden, increases the likelihood of success, decreases the number of amendments, and improves the overall efficiency of trials. Together, big technology providers and pharmaceutical start-ups are setting the course for more effective clinical trials in the future.--BEGIN PROMO--

Key Issues Addressed

  • What are the key trends impacting the clinical trial industry in terms of technology implementation
  • What are the various application areas for AI in terms of execution of clinical trials
  • Who are some of the key industry stakeholders building cutting-edge AI enabled platforms
  • What are the industry drivers and barriers impacting the AI enabled clinical trial industry
  • What are the key strategies global stakeholders are taking to better serve customers while ensuring growth
  • What are the key growth opportunities going forward and call to action for CROs, sponsors and technology participants in the ecosystem

Author: Aarti Siddhesh Chitale

More Information
Author Mrinal Kerhalkar
Industries Healthcare
No Index No
Is Prebook No
Keyword 1 Clinical Trials Development
Keyword 2 Artificial Intelligence in Clinical Research
Keyword 3 clinical trial innovation
Podcast No
WIP Number PDA0-01-00-00-00