Development of Models for Air Pollution-Related Public Health Assessment: Application of Long Short-Term Memory Neural Network for Short-term Exposure Effect

Document
Abstract

This thesis develops an Long Short-Term Memory (LSTM) neural network model to assess the relationship between ambient air pollutant exposure and public health risks, accommodating both linear and nonlinear associations with distributed lags.The research makes three key contributions. First, Maximal Information Coefficient (MIC) methods identify the most relevant air pollutants and their associations with health outcomes. Second, an LSTM model extracts temporally dependent features from exposure series to estimate health impacts. Finally, the model's potential in air pollution epidemiology is explored using Local Interpretable Model-Agnostic Explanations (LIME) to interpret the exposure-health response relationship.

Author Keywords: air pollution epidemiology, Deep Learning, explainable AI, Long Short-Term Memory, Maximal Information Coefficient, public health assessmen

    Item Description
    Type
    Contributors
    Creator (cre): Han, Huawei
    Thesis advisor (ths): Burr, Wesley
    Degree committee member (dgc): Parker, James
    Degree committee member (dgc): Shin, Hwashin
    Degree committee member (dgc): Chan-Reynolds, Michael
    Degree granting institution (dgg): Trent University
    Date Issued
    2025
    Date (Unspecified)
    2025
    Place Published
    Peterborough, ON
    Language
    Extent
    126 pages
    Rights
    Copyright is held by the author, with all rights reserved, unless otherwise noted.
    Local Identifier
    TC-OPET-32116691
    Publisher
    Trent University
    Degree