Events Calendar

Mon
Tue
Wed
Thu
Fri
Sat
Sun
M
T
W
T
F
S
S
26
27
28
29
30
31
1
2
3
4
6
7
8
10
11
12
13
14
15
17
18
20
21
22
24
25
28
29
30
31
1
2
3
4
5
Food and Beverages
2021-07-26 - 2021-07-27    
12:00 am
The conference highlights the theme “Global leading improvement in Food Technology & Beverages Production” aimed to provide an opportunity for the professionals to discuss the [...]
European Endocrinology and Diabetes Congress
2021-08-05 - 2021-08-06    
All Day
This conference is an extraordinary and leading event ardent to the science with practice of endocrinology research, which makes a perfect platform for global networking [...]
Big Data Analysis and Data Mining
2021-08-09 - 2021-08-10    
All Day
Data Mining, the extraction of hidden predictive information from large databases, is a powerful new technology with great potential to help companies focus on the [...]
Agriculture & Horticulture
2021-08-16 - 2021-08-17    
All Day
Agriculture Conference invites a common platform for Deans, Directors, Professors, Students, Research scholars and other participants including CEO, Consultant, Head of Management, Economist, Project Manager [...]
Wireless and Satellite Communication
2021-08-19 - 2021-08-20    
All Day
Conference Series llc Ltd. proudly invites contributors across the globe to its World Convention on 2nd International Conference on Wireless and Satellite Communication (Wireless Conference [...]
Frontiers in Alternative & Traditional Medicine
2021-08-23 - 2021-08-24    
All Day
World Health Organization announced that, “The influx of large numbers of people to mass gathering events may give rise to specific public health risks because [...]
Agroecology and Organic farming
2021-08-26 - 2021-08-27    
All Day
Current research on emerging technologies and strategies, integrated agriculture and sustainable agriculture, crop improvements, the most recent updates in plant and soil science, agriculture and [...]
Agriculture Sciences and Farming Technology
2021-08-26 - 2021-08-27    
All Day
Current research on emerging technologies and strategies, integrated agriculture and sustainable agriculture, crop improvements, the most recent updates in plant and soil science, agriculture and [...]
CIVIL ENGINEERING, ARCHITECTURE AND STRUCTURAL MATERIALS
2021-08-27 - 2021-08-28    
All Day
Engineering is applied to the profession in which information on the numerical/mathematical and natural sciences, picked up by study, understanding, and practice, are applied to [...]
Diabetes, Obesity and Its Complications
2021-09-02 - 2021-09-03    
All Day
Diabetes Congress 2021 aims to provide a platform to share knowledge, expertise along with unparalleled networking opportunities between a large number of medical and industrial [...]
Events on 2021-07-26
Food and Beverages
26 Jul 21
Events on 2021-08-05
Events on 2021-08-09
Events on 2021-08-16
Events on 2021-08-19
Events on 2021-08-23
Events on 2021-09-02
Articles

MIT researchers use AI to find drugs that could be repurposed for COVID-19

ai in healthcare

MIT researchers use AI to find drugs that could be repurposed for COVID-19

The research team noted that lung tissue gets stiffer as a person gets older, showing different patterns of gene expression than in younger people.

The Massachusetts Institute of Technology announced this week that researchers had used machine learning to identify medications that may be repurposed to fight COVID-19.

“Making new drugs takes forever,” Caroline Uhler, a computational biologist in MIT’s Department of Electrical Engineering and Computer Science and the Institute for Data, Systems and Society, said in a press statement. “Really, the only expedient option is to repurpose existing drugs.”

The research from Uhler’s team, which appears in the journal Nature Communications, notes that the novel coronavirus tends to have much more severe effects in older patients.

“Since the mechanical properties of the lung tissue change with aging, this led us to hypothesize an interplay between viral infection/replication and tissue aging,” wrote the researchers.

The researchers pointed out that lung tissue becomes stiffer as a person gets older, and it shows different patterns of gene expression than in younger people in response to the same signal.

“We need to look at aging together with SARS-CoV-2 – what are the genes at the intersection of these two pathways?” said Uhler.

As the study explains, the team generated a list of possible drugs using an autoencoder before mapping the network of genes and proteins involved in aging and novel coronavirus infection. They then pinpointed genes causing cascading effects throughout the network using statistical algorithms.

“Among the various protein kinases … identified by our drug repurposing pipeline, RIPK1 was singled out by our causal analysis as being upstream of the largest number of genes that were differentially expressed by SARS-CoV-2 infection and aging,” wrote the researchers in the study. In other words, drugs that act on RIPK1 may have the potential to treat COVID-19.

“Given the distinct pathways elicited by RIPK1, there is a need to develop appropriate cell culture models that can differentiate between young and aging tissues to validate our findings experimentally and allow for highly specific and targeted drug discovery programs,” read the study.

Machine learning and artificial intelligence have been instrumental for many facets of COVID-19 research, with scientists using them to predict the length of hospitalization and probable outcomes among patients, as well as to detect the disease in lung scans and improve treatment options.

Cris Ross, CIO at the Mayo Clinic, said in December that AI has been key to understanding COVID-19.

Around the world, Ross said, algorithms are being used to “find powerful things that help us diagnose, manage and treat this disease, to watch its spread, to understand where it’s coming next, to understand the characteristics around the disease and to develop new therapies.”

“While our work identified particular drugs and drug targets in the context of COVID-19, our computational platform is applicable well beyond SARS-CoV-2, and we believe that the integration of transcriptional, proteomic, and structural data with network models into a causal framework is an important addition to current drug discovery pipelines,” wrote the MIT research team.