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High-throughput target trial emulation for Alzheimer’s disease drug repurposing with real-world data

Author

Listed:
  • Chengxi Zang

    (Weill Cornell Medicine
    Weill Cornell Medicine)

  • Hao Zhang

    (Weill Cornell Medicine)

  • Jie Xu

    (University of Florida)

  • Hansi Zhang

    (University of Florida)

  • Sajjad Fouladvand

    (University of Kentucky)

  • Shreyas Havaldar

    (Icahn School of Medicine at Mount Sinai)

  • Feixiong Cheng

    (Lerner Research Institute, Cleveland Clinic
    Case Western Reserve University
    Case Western Reserve University School of Medicine)

  • Kun Chen

    (University of Connecticut)

  • Yong Chen

    (University of Pennsylvania)

  • Benjamin S. Glicksberg

    (Icahn School of Medicine at Mount Sinai)

  • Jin Chen

    (University of Kentucky)

  • Jiang Bian

    (University of Florida)

  • Fei Wang

    (Weill Cornell Medicine
    Weill Cornell Medicine)

Abstract

Target trial emulation is the process of mimicking target randomized trials using real-world data, where effective confounding control for unbiased treatment effect estimation remains a main challenge. Although various approaches have been proposed for this challenge, a systematic evaluation is still lacking. Here we emulated trials for thousands of medications from two large-scale real-world data warehouses, covering over 10 years of clinical records for over 170 million patients, aiming to identify new indications of approved drugs for Alzheimer’s disease. We assessed different propensity score models under the inverse probability of treatment weighting framework and suggested a model selection strategy for improved baseline covariate balancing. We also found that the deep learning-based propensity score model did not necessarily outperform logistic regression-based methods in covariate balancing. Finally, we highlighted five top-ranked drugs (pantoprazole, gabapentin, atorvastatin, fluticasone, and omeprazole) originally intended for other indications with potential benefits for Alzheimer’s patients.

Suggested Citation

  • Chengxi Zang & Hao Zhang & Jie Xu & Hansi Zhang & Sajjad Fouladvand & Shreyas Havaldar & Feixiong Cheng & Kun Chen & Yong Chen & Benjamin S. Glicksberg & Jin Chen & Jiang Bian & Fei Wang, 2023. "High-throughput target trial emulation for Alzheimer’s disease drug repurposing with real-world data," Nature Communications, Nature, vol. 14(1), pages 1-16, December.
  • Handle: RePEc:nat:natcom:v:14:y:2023:i:1:d:10.1038_s41467-023-43929-1
    DOI: 10.1038/s41467-023-43929-1
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    References listed on IDEAS

    as
    1. Ruishan Liu & Shemra Rizzo & Samuel Whipple & Navdeep Pal & Arturo Lopez Pineda & Michael Lu & Brandon Arnieri & Ying Lu & William Capra & Ryan Copping & James Zou, 2021. "Evaluating eligibility criteria of oncology trials using real-world data and AI," Nature, Nature, vol. 592(7855), pages 629-633, April.
    2. Steve Rodriguez & Clemens Hug & Petar Todorov & Nienke Moret & Sarah A. Boswell & Kyle Evans & George Zhou & Nathan T. Johnson & Bradley T. Hyman & Peter K. Sorger & Mark W. Albers & Artem Sokolov, 2021. "Machine learning identifies candidates for drug repurposing in Alzheimer’s disease," Nature Communications, Nature, vol. 12(1), pages 1-13, December.
    3. Feixiong Cheng & Rishi J. Desai & Diane E. Handy & Ruisheng Wang & Sebastian Schneeweiss & Albert-László Barabási & Joseph Loscalzo, 2018. "Network-based approach to prediction and population-based validation of in silico drug repurposing," Nature Communications, Nature, vol. 9(1), pages 1-12, December.
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