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Friday, July 08 2022 - 06:00
AsiaNet
Insilico Medicine identified multiple new targets for amyotrophic lateral sclerosis (ALS) using its AI-driven target discovery engine
NEW YORK, July 8, 2022 /PRNewswire-AsiaNet/ --

- Insilico and its collaborators scoured massive datasets and found genes 
relevant to ALS through PandaOmics(TM), Insilico's proprietary AI-driven target 
identification engine.

- 28 targets were identified from CNS and diMN samples; for 18 targets (64%), 
suppression moderately or strongly rescued neurodegeneration.

- The collaborative study was led by Insilico with support from Answer ALS and 
researchers at Johns Hopkins University School of Medicine, Massachusetts 
General Hospital and Harvard Medical School, Mayo Clinic, University of Zurich, 
4B Technologies, Limited, Tsinghua University, and the Buck Center for Aging 
Research.





Insilico Medicine, a clinical-stage end-to-end artificial intelligence 
(AI)-driven drug discovery company, announced today that the company has 
identified multiple unreported potential therapeutic targets for amyotrophic 
lateral sclerosis (ALS), using its proprietary AI-driven target discovery 
engine, PandaOmics(TM). The research was in collaboration with Answer ALS, the 
largest and most comprehensive ALS research project in history. The findings 
were published in the June 28 issue of Frontiers in Aging Neuroscience.

Globally, more than 700,000 people live with ALS, also known as Lou Gehrig's 
disease. People with ALS lose voluntary muscle movement and therefore the 
ability to walk, talk, eat and, eventually, breathe. Progression of ALS disease 
is generally rapid, with patients facing an average life expectancy of between 
two and five years from the onset of symptoms. Unfortunately, existing approved 
drugs for ALS do not halt or reverse the loss of function.

The team of researchers leveraged massive datasets to find genes relevant to 
disease, which could serve as potential targets for new therapeutics. 
PandaOmics(TM), Insilico's proprietary AI-driven target discovery engine, 
helped analyze the expression profiles of central nervous system (CNS) samples 
from public datasets, and direct iPSC-derived motor neurons (diMN) from Answer 
ALS.

As a result of the study, 17 high-confidence and 11 novel therapeutic targets 
were identified from CNS and diMN samples. These targets were further validated 
in c9ALS Drosophila model, mimicking the most common genetic cause of ALS, of 
which 18 targets (64%) have been validated to have functional correlations to 
ALS. Notably, eight unreported genes, including KCNB2, KCNS3, ADRA2B, NR3C1, 
P2RY14, PPP3CB, PTPRC, and RARA, rescue neurodegeneration through their 
suppression strongly. All the potential therapeutic targets were disclosed in 
the paper and at ALS.AI. The paper is available here: 
DOI:10.3389/fnagi.2022.914017

"The results of this collaborative research effort show what is possible when 
we bring together human expertise with AI tools to discover new targets for 
diseases where there is a high unmet need," said Alex Zhavoronkov, PhD, Founder 
and CEO of Insilico Medicine.  "This is only the beginning."

The study was led by Frank Pun, Ph.D., head of Insilico's Greater Bay Area 
team. Other co-authors from Insilico include Dr. Zhavoronkov, Feng Ren, Ph.D., 
co-CEO and Chief Scientific Officer, and Ju Wang, Ph.D., head of biology. 
Researchers from Mayo Clinic, University of Zurich, Tsinghua University, 4B 
Technologies, Johns Hopkins School of Medicine, Harvard Medical School and Buck 
Institute for Research on Aging also contributed to this study.

"We are truly excited to see the Answer ALS data being used to identify 
possible ALS disease-causing pathways and candidate drugs," said Jeffrey D. 
Rothstein MD, PhD, Director, Robert Packard Center for ALS Research and Answer 
ALS. "The work by Insilico is exactly how this unprecedented program was 
envisioned to help change the course of ALS."

"It is exciting to see the power of AI to help understand ALS biology," said 
Merit Cudkowicz, MD, Chief of Neurology and Director of the Healey & AMG Center 
for ALS at Mass General Hospital and Harvard Medical School and corresponding 
author. "Through Sean Healey and his friends, I was introduced to Dr. 
Zhavoronkov and the Insilico team. We immediately saw the potential to connect 
the Insilico team with the multidisciplinary Answer ALS team. We look forward 
to the next steps to turn this knowledge into new targets for treatments for 
people living with ALS."

"From AI-powered target discovery based on massive datasets, to biological 
validation by multiple model systems (fly, mouse, human iPS cells), to rapid 
clinical testing through investigator-initiated trials (IIT), the represents a 
new trend that may dramatically reduce the costs and duration and more 
importantly the success rate of developing medicines, especially for 
neurodegenerative diseases" said Bai Lu, PhD, Professor at Tsinghua University 
and Founder of 4B Technologies.  "We are very happy to be part of this 
international team, and very excited about the subsequent efforts to clinically 
validate these novel targets."

"This demonstrates the power of our biology AI platform, PandaOmics, in target 
discovery. It is impressive that  around 70% (18 out of 28) targets identified 
by AI were validated in a preclinical animal model," said Feng Ren, Ph.D., 
Co-CEO and CSO of Insilico Medicine.  "We are working with collaborators to 
progress some targets toward clinical trials for ALS. At the same time, we are 
also further expanding the utilization of PandaOmics(TM) to discover novel 
targets for other disease areas including oncology, immunology, and fibrosis."

Insilico Medicine has been conducting research on ALS target discovery and drug 
repurposing with other interested parties using PandaOmics(TM) since 2016. This 
study further validates PandaOmics(TM) as an AI tool capable of identifying 
therapeutic targets with potential roles on ALS neurodegeneration, and to 
create new avenues for drug discovery and a better understanding of this rare 
and fatal neuromuscular disease.

About PandaOmics

PandaOmics is an AI-enabled biological target discovery platform. It utilizes 
advanced deep learning models and AI approaches to predict the target genes 
associated with a given disease through a combination of Omics AI scores, 
Text-based AI scores, financial scores, and Key opinion leader (KOL) scores, 
and is currently being employed in both academic and industry settings. The 
algorithm also allows the prioritization of protein targets for novelty, 
confidence, commercial tractability, druggability, safety, and other key 
properties that drive target selection decisions.

About Insilico Medicine

Insilico Medicine, a clinical stage end-to-end artificial intelligence 
(AI)-driven drug discovery company, is connecting biology, chemistry, and 
clinical trials analysis using next-generation AI systems. The company has 
developed AI platforms that utilize deep generative models, reinforcement 
learning, transformers, and other modern machine learning techniques to 
discover novel targets and to design novel molecular structures with desired 
properties. Insilico Medicine is delivering breakthrough solutions to discover 
and develop innovative drugs for cancer, fibrosis, immunity, central nervous 
system diseases and aging-related diseases.

Source: Insilico Medicine
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