New Machine Learning-Based Approach Identifies Existing Drugs That Could Be Repurposed to Fight COVID-19
By HospiMedica International staff writers Posted on 16 Feb 2021 |

Illustration
Researchers have developed a machine learning-based approach to identify drugs that might be repurposed to fight COVID-19 in elderly patients.
The machine learning-based approach developed by researchers at the Massachusetts Institute of Technology (MIT; Cambridge, MA, USA) aims to identify drugs already on the market that could potentially be repurposed to fight COVID-19, particularly in the elderly. The system accounts for changes in gene expression in lung cells caused by both the disease and aging. That combination could allow medical experts to more quickly seek drugs for clinical testing in elderly patients, who tend to experience more severe symptoms. The researchers pinpointed the protein RIPK1 as a promising target for COVID-19 drugs, and they identified three approved drugs that act on the expression of RIPK1.
Stiffening lung tissue in COVID-19 harmed older patients due to aging shows different patterns of gene expression than in younger people, even in response to the same signal. The researchers looked at aging together with SARS-CoV-2, including identifying the genes at the intersection of these two pathways. To select approved drugs that might act on these pathways, the team turned to big data and artificial intelligence.
The researchers zeroed in on the most promising drug repurposing candidates in three broad steps. First, they generated a large list of possible drugs using a machine-learning technique called an autoencoder. Next, they mapped the network of genes and proteins involved in both aging and SARS-CoV-2 infection. Finally, they used statistical algorithms to understand causality in that network, allowing them to pinpoint "upstream" genes that caused cascading effects throughout the network. In principle, drugs targeting those upstream genes and proteins should be promising candidates for clinical trials.
To generate an initial list of potential drugs, the team's autoencoder relied on two key datasets of gene expression patterns. One dataset showed how expression in various cell types responded to a range of drugs already on the market, and the other showed how expression responded to infection with SARS-CoV-2. The autoencoder scoured the datasets to highlight drugs whose impacts on gene expression appeared to counteract the effects of SARS-CoV-2. Next, the researchers narrowed the list of potential drugs by homing in on key genetic pathways. They mapped the interactions of proteins involved in the aging and Sars-CoV-2 infection pathways. Then they identified areas of overlap among the two maps. That effort pinpointed the precise gene expression network that a drug would need to target to combat COVID-19 in elderly patients.
The researchers were yet to identify which genes and proteins were "upstream" (i.e. they have cascading effects on the expression of other genes) and which were "downstream" (i.e. their expression is altered by prior changes in the network). An ideal drug candidate would target the genes at the upstream end of the network to minimize the impacts of infection. So the team used algorithms that infer causality in interacting systems to turn their undirected network into a causal network. The final causal network identified RIPK1 as a target gene/protein for potential COVID-19 drugs, since it has numerous downstream effects. The researchers identified a list of the approved drugs that act on RIPK1 and may have potential to treat COVID-19. Previously these drugs have been approved for the use in cancer. Other drugs that were also identified, including ribavirin and quinapril, are already in clinical trials for COVID-19.
The researchers now plan to share their findings with pharmaceutical companies, clinical testing is needed to determine efficacy before any of the identified drugs can be approved for repurposed use in elderly COVID-19 patients,. While this particular study focused on COVID-19, the researchers say their framework is extendable.
"I'm really excited that this platform can be more generally applied to other infections or diseases," said Anastasiya Belyaeva, study co-author and MIT PhD student.
Related Links:
Massachusetts Institute of Technology (MIT)
The machine learning-based approach developed by researchers at the Massachusetts Institute of Technology (MIT; Cambridge, MA, USA) aims to identify drugs already on the market that could potentially be repurposed to fight COVID-19, particularly in the elderly. The system accounts for changes in gene expression in lung cells caused by both the disease and aging. That combination could allow medical experts to more quickly seek drugs for clinical testing in elderly patients, who tend to experience more severe symptoms. The researchers pinpointed the protein RIPK1 as a promising target for COVID-19 drugs, and they identified three approved drugs that act on the expression of RIPK1.
Stiffening lung tissue in COVID-19 harmed older patients due to aging shows different patterns of gene expression than in younger people, even in response to the same signal. The researchers looked at aging together with SARS-CoV-2, including identifying the genes at the intersection of these two pathways. To select approved drugs that might act on these pathways, the team turned to big data and artificial intelligence.
The researchers zeroed in on the most promising drug repurposing candidates in three broad steps. First, they generated a large list of possible drugs using a machine-learning technique called an autoencoder. Next, they mapped the network of genes and proteins involved in both aging and SARS-CoV-2 infection. Finally, they used statistical algorithms to understand causality in that network, allowing them to pinpoint "upstream" genes that caused cascading effects throughout the network. In principle, drugs targeting those upstream genes and proteins should be promising candidates for clinical trials.
To generate an initial list of potential drugs, the team's autoencoder relied on two key datasets of gene expression patterns. One dataset showed how expression in various cell types responded to a range of drugs already on the market, and the other showed how expression responded to infection with SARS-CoV-2. The autoencoder scoured the datasets to highlight drugs whose impacts on gene expression appeared to counteract the effects of SARS-CoV-2. Next, the researchers narrowed the list of potential drugs by homing in on key genetic pathways. They mapped the interactions of proteins involved in the aging and Sars-CoV-2 infection pathways. Then they identified areas of overlap among the two maps. That effort pinpointed the precise gene expression network that a drug would need to target to combat COVID-19 in elderly patients.
The researchers were yet to identify which genes and proteins were "upstream" (i.e. they have cascading effects on the expression of other genes) and which were "downstream" (i.e. their expression is altered by prior changes in the network). An ideal drug candidate would target the genes at the upstream end of the network to minimize the impacts of infection. So the team used algorithms that infer causality in interacting systems to turn their undirected network into a causal network. The final causal network identified RIPK1 as a target gene/protein for potential COVID-19 drugs, since it has numerous downstream effects. The researchers identified a list of the approved drugs that act on RIPK1 and may have potential to treat COVID-19. Previously these drugs have been approved for the use in cancer. Other drugs that were also identified, including ribavirin and quinapril, are already in clinical trials for COVID-19.
The researchers now plan to share their findings with pharmaceutical companies, clinical testing is needed to determine efficacy before any of the identified drugs can be approved for repurposed use in elderly COVID-19 patients,. While this particular study focused on COVID-19, the researchers say their framework is extendable.
"I'm really excited that this platform can be more generally applied to other infections or diseases," said Anastasiya Belyaeva, study co-author and MIT PhD student.
Related Links:
Massachusetts Institute of Technology (MIT)
Latest COVID-19 News
- Low-Cost System Detects SARS-CoV-2 Virus in Hospital Air Using High-Tech Bubbles
- World's First Inhalable COVID-19 Vaccine Approved in China
- COVID-19 Vaccine Patch Fights SARS-CoV-2 Variants Better than Needles
- Blood Viscosity Testing Can Predict Risk of Death in Hospitalized COVID-19 Patients
- ‘Covid Computer’ Uses AI to Detect COVID-19 from Chest CT Scans
- MRI Lung-Imaging Technique Shows Cause of Long-COVID Symptoms
- Chest CT Scans of COVID-19 Patients Could Help Distinguish Between SARS-CoV-2 Variants
- Specialized MRI Detects Lung Abnormalities in Non-Hospitalized Long COVID Patients
- AI Algorithm Identifies Hospitalized Patients at Highest Risk of Dying From COVID-19
- Sweat Sensor Detects Key Biomarkers That Provide Early Warning of COVID-19 and Flu
- Study Assesses Impact of COVID-19 on Ventilation/Perfusion Scintigraphy
- CT Imaging Study Finds Vaccination Reduces Risk of COVID-19 Associated Pulmonary Embolism
- Third Day in Hospital a ‘Tipping Point’ in Severity of COVID-19 Pneumonia
- Longer Interval Between COVID-19 Vaccines Generates Up to Nine Times as Many Antibodies
- AI Model for Monitoring COVID-19 Predicts Mortality Within First 30 Days of Admission
- AI Predicts COVID Prognosis at Near-Expert Level Based Off CT Scans
Channels
Critical Care
view channel
Ingestible Smart Capsule for Chemical Sensing in the Gut Moves Closer to Market
Intestinal gases are associated with several health conditions, including colon cancer, irritable bowel syndrome, and inflammatory bowel disease, and they have the potential to serve as crucial biomarkers... Read more
Novel Cannula Delivery System Enables Targeted Delivery of Imaging Agents and Drugs
Multiphoton microscopy has become an invaluable tool in neuroscience, allowing researchers to observe brain activity in real time with high-resolution imaging. A crucial aspect of many multiphoton microscopy... Read more
Novel Intrabronchial Method Delivers Cell Therapies in Critically Ill Patients on External Lung Support
Until now, administering cell therapies to patients on extracorporeal membrane oxygenation (ECMO)—a life-support system typically used for severe lung failure—has been nearly impossible.... Read moreSurgical Techniques
view channel
Pioneering Sutureless Coronary Bypass Technology to Eliminate Open-Chest Procedures
In patients with coronary artery disease, certain blood vessels may be narrowed or blocked, requiring a stent or a bypass (also known as diversion) to restore blood flow to the heart. Bypass surgeries... Read more
Intravascular Imaging for Guiding Stent Implantation Ensures Safer Stenting Procedures
Patients diagnosed with coronary artery disease, which is caused by plaque accumulation within the arteries leading to chest pain, shortness of breath, and potential heart attacks, frequently undergo percutaneous... Read more
World's First AI Surgical Guidance Platform Allows Surgeons to Measure Success in Real-Time
Surgeons have always faced challenges in measuring their progress toward surgical goals during procedures. Traditionally, obtaining measurements required stepping out of the sterile environment to perform... Read morePatient Care
view channel
Portable Biosensor Platform to Reduce Hospital-Acquired Infections
Approximately 4 million patients in the European Union acquire healthcare-associated infections (HAIs) or nosocomial infections each year, with around 37,000 deaths directly resulting from these infections,... Read more
First-Of-Its-Kind Portable Germicidal Light Technology Disinfects High-Touch Clinical Surfaces in Seconds
Reducing healthcare-acquired infections (HAIs) remains a pressing issue within global healthcare systems. In the United States alone, 1.7 million patients contract HAIs annually, leading to approximately... Read more
Surgical Capacity Optimization Solution Helps Hospitals Boost OR Utilization
An innovative solution has the capability to transform surgical capacity utilization by targeting the root cause of surgical block time inefficiencies. Fujitsu Limited’s (Tokyo, Japan) Surgical Capacity... Read more
Game-Changing Innovation in Surgical Instrument Sterilization Significantly Improves OR Throughput
A groundbreaking innovation enables hospitals to significantly improve instrument processing time and throughput in operating rooms (ORs) and sterile processing departments. Turbett Surgical, Inc.... Read moreHealth IT
view channel
Printable Molecule-Selective Nanoparticles Enable Mass Production of Wearable Biosensors
The future of medicine is likely to focus on the personalization of healthcare—understanding exactly what an individual requires and delivering the appropriate combination of nutrients, metabolites, and... Read more
Smartwatches Could Detect Congestive Heart Failure
Diagnosing congestive heart failure (CHF) typically requires expensive and time-consuming imaging techniques like echocardiography, also known as cardiac ultrasound. Previously, detecting CHF by analyzing... Read moreBusiness
view channel
Expanded Collaboration to Transform OR Technology Through AI and Automation
The expansion of an existing collaboration between three leading companies aims to develop artificial intelligence (AI)-driven solutions for smart operating rooms with sophisticated monitoring and automation.... Read more