Close Menu
arabicweekly.comarabicweekly.com

    Subscribe to Updates

    Get the latest creative news from FooBar about art, design and business.

    What's Hot

    Genshin Impact Nod-Krai Viewpoints locations

    December 12, 2025

    US stimulus to Prince’s disease: Covid-19 news from around the world

    December 12, 2025

    U-19 Asia Cup 2025 begins in Dubai; India opens campaign against UAE

    December 12, 2025
    Facebook X (Twitter) Instagram
    arabicweekly.comarabicweekly.com
    • Home
    • World News
    • UAE News
    • Business
    • Entertainment
    • Features
    • Lifestyle
    • Opinion
    • More
      • Sports
      • Technology
      • Travel
    arabicweekly.comarabicweekly.com
    Home»Opinion»New Artificial Intelligence Model Could Speed Rare Disease Diagnosis
    Opinion

    New Artificial Intelligence Model Could Speed Rare Disease Diagnosis

    prishita@vivafoxdigital.comBy prishita@vivafoxdigital.comNovember 24, 2025No Comments5 Mins Read
    Share Facebook Twitter Pinterest LinkedIn Tumblr Reddit Telegram Email
    New Artificial Intelligence Model Could Speed Rare Disease Diagnosis
    Share
    Facebook Twitter LinkedIn Pinterest Email
    New Artificial Intelligence Model Could Speed Rare Disease Diagnosis

    “Our goal was to develop a model that ranks variants by disease severity — providing a prioritized, clinically meaningful view of a person’s genome,” said co-senior author Debora Marks, professor of systems biology in the Blavatnik Institute at HMS.

    The team hopes that popEVE can help clinicians diagnose single-variant genetic diseases — especially rare diseases — more quickly and accurately. The model could also be used to identify new drug targets for genetic conditions.

    The tool complements efforts across the HMS community to conduct research, build AI tools, and engage in nationwide collaborations to improve the diagnosis and treatment of rare diseases.

    Turning EVE into popEVE

    As genomic sequencing has become more accessible, physicians have had access to an increasing amount of information about their patients’ genetic variants.

    However, for variants whose link to disease remains poorly understood, identifying which of those variants are responsible for a patient’s condition tends to be time-consuming, inefficient, and sometimes fruitless. As a result, many patients with rare or unique genetic diseases remain undiagnosed for years.

    Several years ago, the Marks Lab developed a generative AI model called EVE that uses deep evolutionary information from different species to learn patterns of mutations that are highly conserved in biology. EVE can then make predictions about how variants in human genes affect protein function.

    But EVE couldn’t easily compare variants on different human genes to determine which might be the most problematic for health. The same is true of other variant prediction models that have emerged in recent years, the researchers said.

    The team believed that finding a better way to compare variants across genes might help clinicians choose which variants to prioritize in their research when trying to diagnose and care for patients, said Rose Orenbuch, a research fellow in the Marks Lab and lead author on the new paper.

    To create popEVE, the researchers added two components to EVE: a large-language protein model, which learns from the amino acid sequences that make up proteins, and human population data that captures natural genetic variation. In doing so, they were able to calibrate the model so that the score it produces for each variant can be compared across genes.

    Because popEVE combines cross-species and within-species information, it reveals how much a variant affects protein function as well as the importance of that variant for human physiology, Marks explained.

    Putting popEVE through its paces

    When the researchers tested popEVE on documented variants and case studies, they found that it successfully:

    • Distinguished between pathogenic and benign variants.
    • Discerned healthy controls from patients with severe developmental disorders.
    • Determined whether a variant was likely to cause death in childhood or adulthood.
    • Assessed whether an alteration was inherited or occurred randomly, even without having parental genetic information.

    Importantly, the model did not show ancestry bias by performing worse in people from underrepresented genetic backgrounds and did not overpredict the prevalence of pathogenic variants.

    The researchers then applied popEVE to a cohort of around 30,000 patients with severe developmental disorders who had not yet received a diagnosis.

    “These are diseases that we assumed were genetic and caused by a single variant based on their severity, but the variant hadn’t been found,” said Orenbuch.

    The analysis led to a diagnosis in about one-third of cases.

    Perhaps most notably, the model identified variants on 123 genes linked to developmental disorders that had not been previously identified — essentially finding the likely genetic causes of the disorders. In fact, 25 of these genes have since been independently confirmed by research in other labs to cause the disorders.

    Moving popEVE into the clinic

    Marks and colleagues are now working on making popEVE available to clinicians and researchers to use and validate in the real world.

    Scientists can access popEVE via an online portal.

    An example output from the popEVE portal. The left and center panels show variant scores in chart and list formats, ranging from most likely to cause disease (dark purple) to least likely (yellow). The right panel depicts a protein crystal structure colored with variant scores. Image: Marks Lab

    The team is also collaborating with organizations including the Children’s Rare Disease Collaborative at Boston Children’s Hospital, the Division of Human Genetics at the Children’s Hospital of Philadelphia, and Genomics England in partnership with the Wellcome Sanger Institute.

    Marks reports that a clinician-researcher at Centro Nacional de Análisis Genómico in Barcelona, Spain, has been using popEVE to interpret variants in his patients — information that has helped him make several rare-disease diagnoses.

    “I feel like we are a step closer to popEVE being useful in the day-to-day pipeline of trying to diagnose genetic diseases faster,” Orenbuch said.

    She added that she is especially excited about the model’s potential for patients who have been unable to receive a diagnosis through standard methods.

    “These are the cases where we have to look outside of the known disease genes, and popEVE has already found a lot of gene candidates,” she said.

    The team noted that while popEVE will need to be further verified to ensure its safety and accuracy before it is widely adopted in the clinic, they hope it can eventually increase clinicians’ confidence in using computational models for genetic diagnoses.

    The researchers are also integrating popEVE scores into existing variant and protein databases such as ProtVar and UniProt, which will allow scientists worldwide to use the model to compare variants across genes.

    By pinpointing the genetic origins of rare or complex diseases, the researchers noted, popEVE may also identify new targets and avenues for drug development.

    “We think prioritizing variants based on predicted disease severity will improve the odds of diagnosis and ultimately pave the way for better treatment and drug discovery,” Marks said.

    The future of federally funded research at Harvard Medical School — supported by taxpayers and done in service to humanity — remains uncertain. Learn more.

    Artificial Diagnosis Disease Intelligence model Rare Speed
    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    Previous ArticleThe Rise Of Intentional Travel: Why Minimalism Is The New Luxury In 2026 | Travel News
    Next Article “Support should be consistent in victory and defeat”: Mirabai Chanu leads powerful discussion on India’s next Olympic heroes at Turf 2025
    prishita@vivafoxdigital.com
    • Website

    Related Posts

    Opinion

    Genshin Impact Nod-Krai Viewpoints locations

    December 12, 2025
    World News

    US stimulus to Prince’s disease: Covid-19 news from around the world

    December 12, 2025
    Opinion

    Fortnite Is Finally Available On Play Store But Not For Everyone: Why This Is Big News | Tech News

    December 12, 2025
    Add A Comment
    Leave A Reply Cancel Reply

    Top Posts

    New TV Shows & Movies Being Added

    October 27, 20259 Views

    Skill Over Technology: Lt Gen Seth’s Message To New Army Aviators In Nashik | India News

    November 22, 20255 Views

    Yami Gautam confirms Haq cleared censorship in UAE; says, “There are no cuts and it is 15 plus” 15 : Bollywood News

    October 31, 20254 Views
    Stay In Touch
    • Facebook
    • YouTube
    • TikTok
    • WhatsApp
    • Twitter
    • Instagram
    Latest Reviews

    Subscribe to Updates

    Get the latest tech news from FooBar about tech, design and biz.

    Demo
    About Us

    Welcome to ArabicWeekly.com — a modern digital magazine delivering insightful and inspiring stories from the Arab world and beyond. With a passion for quality journalism, Arabic Weekly is your trusted source for news, opinions, and features that matter.

    CATEGORIES
    • Business
    • Entertainment
    • World News
    • UAE News
    USEFUL LINKS
    • Terms and Conditions
    • Privacy Policy
    • Contact Us
    • About Us
    © 2025 ArabicWeekly. All Rights Reserved.

    Type above and press Enter to search. Press Esc to cancel.