Statistical Approach to COVID-19 Clinical Trials Aims to Accelerate Drug Approval Process

In response to the COVID-19 pandemic, researchers from the Massachusetts Institute of Technology have published a pair of studies in a COVID-19 special issue of the Harvard Data Science Review, freely available via open access, describing new methods for accelerating drug approvals during pandemics and for providing more accurate measures of the probabilities of success for clinical trials of vaccines and other anti-infective therapies.

"Randomized clinical trials - where patients are assigned randomly to two groups, one receiving a new treatment and the other receiving a placebo or reference treatment - are the gold standard for determining the safety and effectiveness of a treatment," says Andrew Lo, Ph.D., the study's senior author and the Charles E. and Susan T. Harris Professor at the MIT Sloan School of Management. "Only when the treatment group shows significant improvement over the control group, will regulators approve the therapy." He adds, "the current process is designed to protect the public by minimizing the chances of "false positives" (approving ineffective and unsafe therapies), and by and large, it's been very successful."

But there is a trade-off between false positives and false negatives (not approving a safe and effective therapy), and Lo and his collaborators have developed a framework that uses an epidemiological model of COVID-19 to calculate the optimal statistical threshold for approving a drug during a pandemic. "In the midst of an outbreak, many lives are at stake so we need to be less concerned about false positives and more concerned about false negatives than during normal times," says Lo, "In response, we've developed an analytic framework that allows regulators to make this trade-off systematically, transparently, and rationally."

At the core of this new framework - which was jointly developed in collaboration with MIT students Qingyang Xu and Danying Xiao, and former MIT student Shomesh Chaudhuri, Ph.D. (now at QLS Advisors) - is an explicit optimization algorithm designed to minimize the expected loss of life across various scenarios generated by a statistical model of an infectious disease. This algorithm, says Xu, will lead to more drug approvals during outbreaks, not unlike the U.S. Food and Drug Administration's Emergency Use Authorizations (EUA) program. "Our framework complements the EUA, allowing regulators to incorporate loss-of-life considerations quantitatively during periods of extraordinary stress," explains Xu, the lead investigator of the study.

In a companion study authored by Lo and MIT Ph.D. students Kien Wei Siah and Chi Heem Wong, the MIT researchers estimated the probabilities of success (PoSs) of clinical trials for vaccines and other anti-infective therapies using the Citeline® dataset provided by Informa Pharma Intelligence, part of UK-based publishing company, Informa®. This dataset includes 43,414 unique triplets of clinical trial, drug, and disease over the past 20 years, yielding over 2,500 vaccine programs and more than 6,800 nonvaccine, anti-infective programs, the largest dataset of its kind.

"The PoS is a key input into each major decision of every biopharma company about which disease to tackle and how much resources to devote to it," observes Lo.

Because a successful clinical trial can mean billions of dollars in revenues, small changes in PoS can lead to very different business decisions. Therefore, having timely and accurate measures of PoS is critical - and often, these better measures of risk and reward allow investors to put more capital to work.

The overall estimated PoS for industry-sponsored vaccine programs is about 40%, which is the highest among all disease groups (by comparison, the PoS of cancer trials is, historically, less than 5%), and 16.3% for industry-sponsored nonvaccine, anti-infective programs. Viruses involved in recent outbreaks--Middle East respiratory syndrome (MERS), severe acute respiratory syndrome (SARS), Ebola, and Zika--have had 45 nonvaccine and 35 vaccine development programs initiated over the past two decades, and there have been only two approved vaccines to date (for Ebola). This points to a clear need for new policies to address this gap.

"As governments around the world begin to formulate a more systematic strategy for dealing with pandemics beyond COVID-19, these estimates can be used by policymakers to identify areas most likely to be underserved by private sector engagement and in need of public sector support," said Wong, the study's lead author. These results are part of Project ALPHA (Analytics for Life-sciences Professionals and Healthcare Advocates) - an ongoing initiative at the MIT Laboratory for Financial Engineering (LFE) where Lo is director - to help make the biomedical funding ecosystem more efficient. "We now provide this information on a regular basis, it's not just a one-shot deal," Lo says. Users can obtain the most current PoS estimates at https://projectalpha.mit.edu.

Shomesh Chaudhuri, Andrew W Lo, Danying Xiao, Qingyang Xu.
Bayesian Adaptive Clinical Trials for Anti-Infective Therapeutics During Epidemic Outbreaks.
Harvard Data Science Review, 2020. doi: 10.1162/99608f92.7656c213

Most Popular Now

Herefordshire and Worcestershire Health …

Herefordshire and Worcestershire Health and Care NHS Trust has successfully implemented Alcidion's Miya Precision platform to streamline bed management workflow across seven community hospitals in Worcestershire. The trust delivers community...

A Shortcut for Drug Discovery

For most human proteins, there are no small molecules known to bind them chemically (so called "ligands"). Ligands frequently represent important starting points for drug development but this knowledge gap...

New Horizon Europe Funding Boosts Europe…

The European Commission has announced the launch of new Horizon Europe calls, with a substantial funding pool of over €112 million. These calls are aimed primarily at pioneering projects in...

Cleveland Clinic Study Finds AI can Deve…

Cleveland Clinic researchers developed an artficial intelligence (AI) model that can determine the best combination and timeline to use when prescribing drugs to treat a bacterial infection, based solely on...

New AI-Technology Estimates Brain Age Us…

As people age, their brains do, too. But if a brain ages prematurely, there is potential for age-related diseases such as mild-cognitive impairment, dementia, or Parkinson's disease. If "brain age...

With Huge Patient Dataset, AI Accurately…

Scientists have designed a new artificial intelligence (AI) model that emulates randomized clinical trials at determining the treatment options most effective at preventing stroke in people with heart disease. The model...

Radboud University Medical Center and Ph…

Royal Philips (NYSE: PHG, AEX: PHIA), a global leader in health technology, and Radboud University Medical Center have signed a hospital-wide, long-term strategic partnership that delivers the latest patient monitoring...

GPT-4, Google Gemini Fall Short in Breas…

Use of publicly available large language models (LLMs) resulted in changes in breast imaging reports classification that could have a negative effect on patient management, according to a new international...

ChatGPT fails at heart risk assessment

Despite ChatGPT's reported ability to pass medical exams, new research indicates it would be unwise to rely on it for some health assessments, such as whether a patient with chest...

Study Shows ChatGPT Failed when Challeng…

With artificial intelligence (AI) poised to become a fundamental part of clinical research and decision making, many still question the accuracy of ChatGPT, a sophisticated AI language model, to support...

Virtual Reality Shows Promise in Fightin…

A new study published in JMIR Mental Health sheds light on the promising role of virtual reality (VR) in treating major depressive disorder (MDD). Titled "Examining the Efficacy of Extended...

AXREM and Highland Marketing Partner to …

AXREM represents member companies that collectively provide UK hospitals with most of their diagnostic medical imaging technology, and radiotherapy equipment. The association has seen substantial growth in recent years, with membership...