Real-world evidence (RWE) in clinical trials is changing drug development by using Real-World Data (RWD) from various sources like electronic health records (EHRs), insurance claims, and digital health tools, researchers can gather valuable insights into how drugs work in a wide range of populations. This move toward RWE not only deepens our understanding of treatment effects and patient outcomes, but also speeds up the drug development process, making it more efficient and centered around patients. In this article, we explore the role of RWE in clinical trials, discussing its benefits, challenges, and the evolving regulatory environment that supports its use in healthcare decision-making.
Real-World Evidence is the clinical evidence generated through the analysis of Real-World Data (RWD). Unlike traditional clinical trial data, which is collected under highly controlled conditions to ensure internal validity, RWE uses RWD to demonstrate the actual experiences of patients in everyday environments, capturing a broader range of patient behaviours, treatment responses, and health outcomes.
Real-World Data is patient health-related data collected outside of traditional clinical trials. RWD can come from a range of sources including;
The diversity in data sources allows for a broader understanding of patient health as RWD can capture the variability of real-life patient experiences, enabling the identification of trends and patterns that might not otherwise have been captured in a traditional clinical trial.
There are several benefits to using RWE in clinical trials. Let’s look at these in more detail:
As much as there are benefits to RWE, there are also challenges and it is not always straight forward for drug developers to incorporate RWE into their study analysis. Here are some key challenges to RWE:
As mentioned, regulatory agencies are open to the use of RWE to help drug developers demonstrate a therapy’s safety and efficacy. In this section we will review the regulatory stance on RWE in more detail.
The FDA has been proactive in integrating RWE into its regulatory processes, recognising its potential to enhance drug development and regulatory decision-making. The FDA's framework for evaluating RWE encourages the use of RWE to support regulatory submissions, including new drug approvals and post-approval studies. The framework emphasises several key principles:
Purpose and Scope: The FDA's RWE framework is designed to evaluate real-world evidence to support new drug indications, fulfil post-approval study requirements, and make other regulatory decisions, in line with the 21st Century Cures Act.
The EMA has also embraced the potential of RWE, particularly through its "Regulatory Science to 2025" strategy. This strategy underscores the importance of leveraging RWE for a deeper understanding of diseases, treatment pathways, and the real-life use of medicines. The EMA focuses on several key areas:
Capturing and analysing RWD would not be possible if it was not for the advancements in digital technologies. Below we review these technologies in more detail and how they have made RWE possible.
Wearable devices and mobile health apps have revolutionised the collection of patient health data, offering opportunities for real-time monitoring and continuous data collection. These technologies include fitness trackers, smart watches, and biosensors that can track a wide range of physiological parameters such as heart rate, activity levels, sleep patterns, and even glucose levels. The constant stream of data generated by these devices provides a detailed picture of a patient's health and lifestyle, offering valuable insights for RWE studies.
Mobile health apps complement wearable devices by providing platforms for patients to manage their health conditions, track medication adherence, and communicate with healthcare providers. These apps can collect a wide array of data, from self-reported symptoms and medication intake to data collected via integrated smartphone sensors. The combination of wearable devices and mobile health apps enables the collection of comprehensive and continuous health data, which can be used to enhance the precision and relevance of RWE studies.
The integration of big data analytics and artificial intelligence (AI) is transforming the collection and analysis of real-world data (RWD). Big data analytics involves processing vast amounts of data rapidly, enabling researchers to uncover patterns and correlations that inform healthcare decision-making. Advanced analytics techniques, such as machine learning and natural language processing, can handle the complex and unstructured nature of RWD. This is particularly useful when extracting meaningful insights that may not be apparent through traditional analysis methods.
Artificial intelligence, particularly machine learning algorithms, plays a crucial role in analysing RWD by identifying trends, predicting outcomes, and generating actionable insights. For example, AI can be used to predict disease progression, treatment responses, and potential adverse events based on historical data. The combination of big data analytics and AI enhances the precision and scalability of RWE studies, allowing for the analysis of larger and more diverse patient populations.
These are digital versions of patients' paper charts, offering comprehensive records of medical history, diagnoses, treatment plans, immunisation dates, and test results. The digitisation of patient records has been pivotal in streamlining the collection of RWD, making it more accessible for research purposes. EHRs provide a wealth of data that can be used to generate RWE, including information on patient demographics, comorbidities, treatment outcomes, and healthcare utilisation patterns.
The integration of EHRs into RWE studies enhances the accessibility and usability of health data. Researchers can use EHR data to track treatment outcomes, monitor disease progression, and identify trends in patient care. Moreover, EHRs facilitate the linkage of data across different healthcare settings, providing a more comprehensive view of patient health. This integration enables researchers to conduct longitudinal studies that capture the long-term effects of treatments and interventions, contributing to a deeper understanding of patient outcomes in real-world settings.
Pfizer's use of Real-World Evidence (RWE) to expand the label of IBRANCE® (palbociclib) is a notable example of how RWE can influence regulatory decisions and broaden treatment options. Initially approved in 2015 for treating HR+/HER2- advanced or metastatic breast cancer in postmenopausal women, Pfizer sought to expand its use to include male patients, a population not included in the initial clinical trials. To achieve this, Pfizer conducted an observational study using real-world data from electronic health records (EHRs) to demonstrate the effectiveness of IBRANCE® in men with breast cancer. Based on the real-world evidence presented, the FDA expanded the label of IBRANCE® in 2019 to include male patients, marking a significant instance where RWE directly influenced drug labelling and expanded treatment options for a broader patient population.
Novartis leveraged RWE to support the real-world effectiveness and safety of Entresto® (sacubitril/valsartan), a treatment for heart failure. Clinical trials had already demonstrated its benefits over enalapril in reducing the risks of death and hospitalisation due to heart failure. After approval, Novartis continued to gather real-world data from patients using Entresto® through registries and observational studies. This data provided ongoing evidence of the drug's effectiveness and safety in a broader, more diverse patient population outside the controlled environment of clinical trials. The real-world data supported the findings from the clinical trials and helped further establish the real-world effectiveness and safety profile of Entresto®, reinforcing its position in treatment guidelines and clinical practice for heart failure.
AstraZeneca's TAGRISSO® (osimertinib) is a medication used in treating non-small cell lung cancer (NSCLC) with specific mutations. Its approval and subsequent label expansions have been supported by a combination of clinical trial data and RWE. Real-world evidence has been particularly useful in demonstrating the drug's effectiveness in real-world settings, including its use in populations and scenarios not fully covered in clinical trials. This includes data on long-term survival rates, quality of life, and effectiveness in treating central nervous system (CNS) metastases. The integration of RWE has helped provide comprehensive evidence of TAGRISSO®'s benefits, supporting its widespread adoption in clinical practice for the treatment of NSCLC with EGFR mutations.
The unprecedented global effort to develop, approve, and monitor COVID-19 vaccines has relied heavily on RWE. This includes post-authorisation safety and effectiveness studies conducted in real-world populations. Governments and pharmaceutical companies have utilised health records, vaccine registries, and other sources of health data to monitor the safety and effectiveness of COVID-19 vaccines in the general population. This ongoing collection of RWE is crucial for identifying rare side effects, understanding long-term immunity, and making informed decisions about booster doses. The real-world evidence gathered has played a key role in ensuring public confidence in the vaccines, guiding public health policies, and adapting vaccination strategies based on emerging data about vaccine performance against variants of the virus.
By analysing diverse patient data, RWE facilitates the tailoring of treatments to individual patient needs, genetic profiles, and environmental factors. This precision approach enhances the efficacy of treatments while minimising adverse effects, significantly improving patient outcomes. Predictive analytics, powered by advanced machine learning algorithms, can identify patients at high risk for specific conditions or those likely to benefit from particular therapies. This data-driven approach supports the development of personalised treatment plans that align with each patient's unique health profile, leading to more effective and targeted interventions.
Technological advancements are set to further revolutionise the collection and analysis of real-world data (RWD). The integration of artificial intelligence (AI), machine learning, and big data analytics is transforming how RWD is processed and interpreted. AI algorithms can analyse vast amounts of data to identify patterns, predict outcomes, and generate actionable insights. For example, AI can predict disease progression, treatment responses, and potential adverse events based on historical data. Additionally, wearable devices and mobile health apps continue to generate a wealth of RWD, providing continuous real-time data streams that enrich RWE studies. These technologies enable more precise and comprehensive analyses, supporting more informed decision-making in drug development and patient care.
As RWE gains prominence, regulatory bodies such as the FDA and EMA are evolving their frameworks to accommodate and encourage its use in drug approvals and monitoring. These evolving frameworks emphasise the importance of data quality, methodological rigor, and transparency in RWE studies. Collaborative initiatives between regulatory agencies, pharmaceutical companies, and technology providers are crucial for establishing standards and guidelines that ensure the reliability and ethical use of RWE. These initiatives aim to facilitate the integration of RWE into regulatory decision-making processes, enhancing the relevance and applicability of regulatory assessments to real-world clinical practice.
Collaborative initiatives are essential for the successful integration of RWE into healthcare and pharmaceutical research. Partnerships between pharmaceutical companies, regulatory agencies, healthcare providers, and technology firms foster innovation and facilitate the development of comprehensive frameworks for RWE utilisation. These collaborations enable the sharing of expertise, resources, and data, supporting the generation of high-quality, reliable RWE. By working together, stakeholders can address common challenges, such as data standardisation, privacy concerns, and ethical considerations, and develop best practices that promote the responsible and effective use of RWE. Collaborative efforts also support the creation of robust infrastructure and data governance frameworks, ensuring that RWE can be seamlessly integrated into healthcare decision-making process.
In Summary, RWE provides a comprehensive picture of how treatments perform across diverse patient populations and healthcare settings. This makes RWE a critical tool for understanding the effectiveness, safety, and value of medical interventions in real-world practice.
The insights gained from RWE can inform clinical guidelines, support regulatory decisions, and enhance patient care by aligning treatment approaches with real-world patient needs and experiences.
Quanticate’s Statistical Consultancy Team are dedicated to helping you reduce your cost of drug development and can help you save time to submission with well-designed trials and expert statistical methodologies, including the implementation of real-world data. If you would like more information on how we can assist your clinical trial submit an RFI.
Potential biases in Real-World Evidence (RWE) studies include selection bias, information bias, and confounding. Selection bias occurs when the study population is not representative of the broader patient population. Information bias arises from inaccuracies in data collection, while confounding occurs when extraneous variables affect the observed relationship between the treatment and outcome. These biases can be mitigated through robust study designs, such as propensity score matching, rigorous data validation, and advanced statistical methods to control for confounders.
Real-World Evidence (RWE) facilitates comparative effectiveness research by providing data on how different treatments perform in real-world settings. By analysing data from electronic health records, patient registries, and other sources, researchers can compare the effectiveness, safety, and costs of multiple treatment options across diverse patient populations. This comparative data helps healthcare providers and policymakers make evidence-based decisions about which treatments offer the best outcomes for specific patient groups.
Patient-reported outcomes (PROs) play a crucial role in Real-World Evidence (RWE) studies by capturing patients' perspectives on their health status, treatment experiences, and quality of life. PROs provide valuable insights into the real-world impact of treatments from the patient's viewpoint, complementing clinical and administrative data. Incorporating PROs into RWE studies enhances the understanding of treatment benefits and risks, helping to inform patient-centered care and improve healthcare decision-making.
Using Real-World Evidence (RWE) for rare disease research presents challenges such as limited data availability, small patient populations, and variability in disease presentation. Rare diseases often lack extensive real-world data due to their low prevalence, making it difficult to generate robust evidence. To address these challenges, researchers can leverage global patient registries, collaborate across multiple institutions, and employ advanced statistical methods designed for small sample sizes. These approaches can enhance the quality and reliability of RWE in rare disease research.
Real-World Evidence (RWE) can be integrated into clinical decision support systems (CDSS) to provide healthcare providers with evidence-based recommendations at the point of care. By incorporating RWE into CDSS, clinicians can access up-to-date information on treatment effectiveness, safety, and patient outcomes, tailored to individual patient characteristics. This integration supports personalised medicine, improves clinical decision-making, and enhances patient care by ensuring that treatment decisions are informed by the latest real-world data.
Real-World Evidence (RWE) influences the development of clinical guidelines by providing comprehensive data on the effectiveness and safety of treatments in real-world settings. Guideline development committees use RWE to supplement clinical trial data, offering a broader perspective on treatment outcomes across diverse patient populations. This evidence helps refine clinical recommendations, ensuring that guidelines are based on robust, relevant data that reflects actual clinical practice and patient experiences.
Using Real-World Evidence (RWE) in regulatory submissions for medical devices involves considerations such as data quality, methodological rigor, and relevance to the device's intended use. Regulators require high-quality, reliable data to assess the safety and effectiveness of medical devices. RWE can provide valuable insights into device performance in real-world settings, but it must be collected and analysed using rigorous methods to ensure its validity. Clear documentation of data sources, study designs, and analytical approaches is essential for regulatory acceptance.
Real-World Evidence (RWE) can be used to address health disparities by identifying gaps in care, treatment access, and outcomes across different populations. By analysing diverse real-world data sources, researchers can detect variations in healthcare delivery and outcomes based on factors such as race, ethnicity, socioeconomic status, and geographic location. This evidence can inform targeted interventions, policy changes, and resource allocation to reduce disparities and promote equitable healthcare for all patient groups.