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Larry Curtis

Larry Curtis

· President and Managing Partner of WinnDevelopment and a member of the Board of DirectorsVerified

Harvard University · Landscape Architecture

Active 1923–2024

h-index109
Citations41.7k
Papers846106 last 5y
Funding$28.9M1 active
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Research topics

  • Political Science
  • Medicine
  • Computer Science
  • Internal medicine
  • Public relations
  • Intensive care medicine
  • Pathology
  • Data science
  • Knowledge management

Selected publications

  • The role of machine learning in clinical research: transforming the future of evidence generation

    Trials · 2021 · 277 citations

    • Political Science
    • Computer Science
    • Medicine

    BACKGROUND: Interest in the application of machine learning (ML) to the design, conduct, and analysis of clinical trials has grown, but the evidence base for such applications has not been surveyed. This manuscript reviews the proceedings of a multi-stakeholder conference to discuss the current and future state of ML for clinical research. Key areas of clinical trial methodology in which ML holds particular promise and priority areas for further investigation are presented alongside a narrative review of evidence supporting the use of ML across the clinical trial spectrum. RESULTS: Conference attendees included stakeholders, such as biomedical and ML researchers, representatives from the US Food and Drug Administration (FDA), artificial intelligence technology and data analytics companies, non-profit organizations, patient advocacy groups, and pharmaceutical companies. ML contributions to clinical research were highlighted in the pre-trial phase, cohort selection and participant management, and data collection and analysis. A particular focus was paid to the operational and philosophical barriers to ML in clinical research. Peer-reviewed evidence was noted to be lacking in several areas. CONCLUSIONS: ML holds great promise for improving the efficiency and quality of clinical research, but substantial barriers remain, the surmounting of which will require addressing significant gaps in evidence.

  • Comparative Effectiveness of Aspirin Dosing in Cardiovascular Disease

    New England Journal of Medicine · 2021 · 298 citations

    • Medicine
    • Intensive care medicine
    • Internal medicine

    BACKGROUND: The appropriate dose of aspirin to lower the risk of death, myocardial infarction, and stroke and to minimize major bleeding in patients with established atherosclerotic cardiovascular disease is a subject of controversy. METHODS: Using an open-label, pragmatic design, we randomly assigned patients with established atherosclerotic cardiovascular disease to a strategy of 81 mg or 325 mg of aspirin per day. The primary effectiveness outcome was a composite of death from any cause, hospitalization for myocardial infarction, or hospitalization for stroke, assessed in a time-to-event analysis. The primary safety outcome was hospitalization for major bleeding, also assessed in a time-to-event analysis. RESULTS: A total of 15,076 patients were followed for a median of 26.2 months (interquartile range [IQR], 19.0 to 34.9). Before randomization, 13,537 (96.0% of those with available information on previous aspirin use) were already taking aspirin, and 85.3% of these patients were previously taking 81 mg of daily aspirin. Death, hospitalization for myocardial infarction, or hospitalization for stroke occurred in 590 patients (estimated percentage, 7.28%) in the 81-mg group and 569 patients (estimated percentage, 7.51%) in the 325-mg group (hazard ratio, 1.02; 95% confidence interval [CI], 0.91 to 1.14). Hospitalization for major bleeding occurred in 53 patients (estimated percentage, 0.63%) in the 81-mg group and 44 patients (estimated percentage, 0.60%) in the 325-mg group (hazard ratio, 1.18; 95% CI, 0.79 to 1.77). Patients assigned to 325 mg had a higher incidence of dose switching than those assigned to 81 mg (41.6% vs. 7.1%) and fewer median days of exposure to the assigned dose (434 days [IQR, 139 to 737] vs. 650 days [IQR, 415 to 922]). CONCLUSIONS: In this pragmatic trial involving patients with established cardiovascular disease, there was substantial dose switching to 81 mg of daily aspirin and no significant differences in cardiovascular events or major bleeding between patients assigned to 81 mg and those assigned to 325 mg of aspirin daily. (Funded by the Patient-Centered Outcomes Research Institute; ADAPTABLE ClinicalTrials.gov number, NCT02697916.).

Recent grants

Frequent coauthors

  • Adrian F. Hernandez

    Clinical Research Institute

    1093 shared
  • Bradley G. Hammill

    942 shared
  • Gregg C. Fonarow

    University of California, Los Angeles

    813 shared
  • Paul A. Heidenreich

    VA Palo Alto Health Care System

    621 shared
  • Eric D. Peterson

    The University of Texas Southwestern Medical Center

    539 shared
  • Frederick A. Masoudi

    Ascension

    512 shared
  • Sana M. Al‐Khatib

    Duke Medical Center

    491 shared
  • Deepak L. Bhatt

    Cornell University

    400 shared

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