<p>A team led by an Indian-origin scientist has used artificial intelligence (AI) to identify hundreds of new potential drugs that could help treat Covid-19, the disease caused by the novel coronavirus, or SARS-CoV-2.</p>.<p>"There is an urgent need to identify effective drugs that treat or prevent Covid-19," said Anandasankar Ray, a professor at the University of California, Riverside in the US.</p>.<p>"We have developed a drug discovery pipeline that identified several candidates," said Ray, who led the research published in the journal Heliyon.</p>.<p><a href="https://www.deccanherald.com/coronavirus-live-news-covid-19-latest-updates.html" target="_blank"><strong>CORONAVIRUS SPECIAL COVERAGE ONLY ON DH</strong></a></p>.<p>The drug discovery pipeline is a type of computational strategy linked to AI -- a computer algorithm that learns to predict activity through trial and error, improving over time.</p>.<p>With no clear end in sight, the Covid-19 pandemic has disrupted lives, strained health care systems, and weakened economies, the researchers said.</p>.<p>Efforts to repurpose drugs, such as Remdesivir, have achieved some success. A vaccine for the SARS-CoV-2 virus could be months away, though it is not guaranteed, they said.</p>.<p>"As a result, drug candidate pipelines, such as the one we developed, are extremely important to pursue as a first step towards the systematic discovery of new drugs for treating Covid-19," Ray said.</p>.<p>"Existing FDA-approved drugs that target one or more human proteins important for viral entry and replication are currently a high priority for repurposing as new Covid-19 drugs," he said.</p>.<p>Ray said the demand is high for additional drugs or small molecules that can interfere with both entry and replication of SARS-CoV-2 in the body, adding "our drug discovery pipeline can help."</p>.<p><a href="https://www.deccanherald.com/national/coronavirus-news-live-updates-unlock-30-rules-india-maharashtra-karnataka-delhi-tamil-nadu-mumbai-bengaluru-chennai-ahmedabad-new-delhi-total-cases-deaths-recoveries-today-covid-19-coronavirus-vaccine-covid-vaccine-updates-869265.html#1" target="_blank"><strong>For latest updates and live news on coronavirus, click here</strong></a></p>.<p>Joel Kowalewski, a graduate student in Ray’s lab, used small numbers of previously known ligands for 65 human proteins that are known to interact with SARS-CoV-2 proteins.</p>.<p>He generated machine learning models for each of the human proteins.</p>.<p>"These models are trained to identify new small molecule inhibitors and activators -- the ligands -- simply from their 3D structures," Kowalewski said.</p>.<p>The researchers were thus able to create a database of chemicals whose structures were predicted as interactors of the 65 protein targets. They also evaluated the chemicals for safety.</p>.<p>"The 65 protein targets are quite diverse and are implicated in many additional diseases as well, including cancers," Kowalewski said.</p>.<p>Ray and Kowalewski used their machine learning models to screen more than 10 million commercially available small molecules from a database comprised of 200 million chemicals.</p>.<p><strong>READ: <a href="https://www.deccanherald.com/science-and-environment/people-were-immune-to-covid-19-before-it-existed-study-871274.html" target="_blank">People were immune to Covid-19 before it existed: Study</a></strong></p>.<p>They identified the best-in-class hits for the 65 human proteins that interact with SARS-CoV-2 proteins.</p>.<p>The researchers identified compounds among the hits that are already FDA approved, such as drugs and compounds used in food.</p>.<p>They also used their models to compute toxicity, which helped them reject potentially toxic candidates.</p>.<p>This helped them prioritise the chemicals that were predicted to interact with SARS-CoV-2 targets.</p>.<p>The method allowed the researchers to not only identify the highest scoring candidates with significant activity against a single human protein target but also find a few chemicals that were predicted to inhibit two or more human protein targets.</p>.<p>"Compounds I am most excited to pursue are those predicted to be volatile, setting up the unusual possibility of inhaled therapeutics," Ray added.</p>
<p>A team led by an Indian-origin scientist has used artificial intelligence (AI) to identify hundreds of new potential drugs that could help treat Covid-19, the disease caused by the novel coronavirus, or SARS-CoV-2.</p>.<p>"There is an urgent need to identify effective drugs that treat or prevent Covid-19," said Anandasankar Ray, a professor at the University of California, Riverside in the US.</p>.<p>"We have developed a drug discovery pipeline that identified several candidates," said Ray, who led the research published in the journal Heliyon.</p>.<p><a href="https://www.deccanherald.com/coronavirus-live-news-covid-19-latest-updates.html" target="_blank"><strong>CORONAVIRUS SPECIAL COVERAGE ONLY ON DH</strong></a></p>.<p>The drug discovery pipeline is a type of computational strategy linked to AI -- a computer algorithm that learns to predict activity through trial and error, improving over time.</p>.<p>With no clear end in sight, the Covid-19 pandemic has disrupted lives, strained health care systems, and weakened economies, the researchers said.</p>.<p>Efforts to repurpose drugs, such as Remdesivir, have achieved some success. A vaccine for the SARS-CoV-2 virus could be months away, though it is not guaranteed, they said.</p>.<p>"As a result, drug candidate pipelines, such as the one we developed, are extremely important to pursue as a first step towards the systematic discovery of new drugs for treating Covid-19," Ray said.</p>.<p>"Existing FDA-approved drugs that target one or more human proteins important for viral entry and replication are currently a high priority for repurposing as new Covid-19 drugs," he said.</p>.<p>Ray said the demand is high for additional drugs or small molecules that can interfere with both entry and replication of SARS-CoV-2 in the body, adding "our drug discovery pipeline can help."</p>.<p><a href="https://www.deccanherald.com/national/coronavirus-news-live-updates-unlock-30-rules-india-maharashtra-karnataka-delhi-tamil-nadu-mumbai-bengaluru-chennai-ahmedabad-new-delhi-total-cases-deaths-recoveries-today-covid-19-coronavirus-vaccine-covid-vaccine-updates-869265.html#1" target="_blank"><strong>For latest updates and live news on coronavirus, click here</strong></a></p>.<p>Joel Kowalewski, a graduate student in Ray’s lab, used small numbers of previously known ligands for 65 human proteins that are known to interact with SARS-CoV-2 proteins.</p>.<p>He generated machine learning models for each of the human proteins.</p>.<p>"These models are trained to identify new small molecule inhibitors and activators -- the ligands -- simply from their 3D structures," Kowalewski said.</p>.<p>The researchers were thus able to create a database of chemicals whose structures were predicted as interactors of the 65 protein targets. They also evaluated the chemicals for safety.</p>.<p>"The 65 protein targets are quite diverse and are implicated in many additional diseases as well, including cancers," Kowalewski said.</p>.<p>Ray and Kowalewski used their machine learning models to screen more than 10 million commercially available small molecules from a database comprised of 200 million chemicals.</p>.<p><strong>READ: <a href="https://www.deccanherald.com/science-and-environment/people-were-immune-to-covid-19-before-it-existed-study-871274.html" target="_blank">People were immune to Covid-19 before it existed: Study</a></strong></p>.<p>They identified the best-in-class hits for the 65 human proteins that interact with SARS-CoV-2 proteins.</p>.<p>The researchers identified compounds among the hits that are already FDA approved, such as drugs and compounds used in food.</p>.<p>They also used their models to compute toxicity, which helped them reject potentially toxic candidates.</p>.<p>This helped them prioritise the chemicals that were predicted to interact with SARS-CoV-2 targets.</p>.<p>The method allowed the researchers to not only identify the highest scoring candidates with significant activity against a single human protein target but also find a few chemicals that were predicted to inhibit two or more human protein targets.</p>.<p>"Compounds I am most excited to pursue are those predicted to be volatile, setting up the unusual possibility of inhaled therapeutics," Ray added.</p>