Machine-learned modeling of PM exposures in rural Lao PDR.

Journal: The Science of the total environment
PMID:

Abstract

This study presents a machine-learning-enhanced method of modeling PM personal exposures in a data-scarce, rural, solid fuel use context. Data collected during a cookstove (Africa Clean Energy (ACE)-1 solar-battery-powered stove) intervention program in rural Lao PDR are presented and leveraged to explore advanced techniques for predicting personal exposures to particulate matter with aerodynamic diameter smaller than 2.5 μm (PM). Mean 48-h PM exposure concentrations for female cooks were measured for the pre- and post-intervention periods (the "Before" and "After" periods, respectively) as 123 μg/m and 81 μg/m. Mean 48-h PM kitchen air pollution ("KAP") concentrations were measured at 462 μg/m Before and 124 μg/m After. Application of machine learning and ensemble modeling demonstrated cross-validated personal exposure predictions that were modest at the individual level but reasonably strong at the group level, with the best models producing an observed vs. predicted r between 0.26 and 0.31 (r = 0.49 when using a smaller, un-imputed dataset) and mean Before estimates of 119-120 μg/m and After estimates of 86-88 μg/m. This offered improvement over one typical method of predicting exposure - using a kitchen exposure factor (the ratio of exposure to KAP)- which demonstrated an r ~ 0.03 and poorly estimated group average values. The results of these analyses highlight areas of methodological improvement for future exposure assessments of household air pollution and provide evidence for researchers to explore the advantages of further incorporating machine learning methods into similar research across wider geographic and cultural contexts.

Authors

  • L D Hill
    Division of Environmental Health Sciences, School of Public Health, University of California, Berkeley, 2121 Berkeley Way #5302, Berkeley, CA 94720, USA. Electronic address: drew.hill@berkeley.edu.
  • A Pillarisetti
    Division of Environmental Health Sciences, School of Public Health, University of California, Berkeley, 2121 Berkeley Way #5302, Berkeley, CA 94720, USA.
  • S Delapena
    Berkeley Air Monitoring Group, Inc., 1900 Addison St #350, Berkeley, CA 94704, USA.
  • C Garland
    Berkeley Air Monitoring Group, Inc., 1900 Addison St #350, Berkeley, CA 94704, USA.
  • D Pennise
    Berkeley Air Monitoring Group, Inc., 1900 Addison St #350, Berkeley, CA 94704, USA.
  • A Pelletreau
    Lao Institute for Renewable Energy, Ban Watnak Lao-Thai Friendship Road, Sisattanak District, Vientiane, Lao People's Democratic Republic.
  • P Koetting
    Lao Institute for Renewable Energy, Ban Watnak Lao-Thai Friendship Road, Sisattanak District, Vientiane, Lao People's Democratic Republic.
  • T Motmans
    Lao Institute for Renewable Energy, Ban Watnak Lao-Thai Friendship Road, Sisattanak District, Vientiane, Lao People's Democratic Republic.
  • K Vongnakhone
    Lao Institute for Renewable Energy, Ban Watnak Lao-Thai Friendship Road, Sisattanak District, Vientiane, Lao People's Democratic Republic.
  • C Khammavong
    Lao Institute for Renewable Energy, Ban Watnak Lao-Thai Friendship Road, Sisattanak District, Vientiane, Lao People's Democratic Republic.
  • M R Boatman
    Geo-Sys (Lao) Co., Ltd, 136/9, Hom 7, Sokphaluang Village, Sisattanak District, Vientiane, Lao People's Democratic Republic.
  • J Balmes
    Division of Environmental Health Sciences, School of Public Health, University of California, Berkeley, 2121 Berkeley Way #5302, Berkeley, CA 94720, USA; Department of Medicine, University of California, San Francisco, 505 Parnassus Ave, San Francisco, CA 94143, USA.
  • A Hubbard
    Division of Epidemiology and Biostatistics, School of Public Health, University of California, Berkeley, 2121 Berkeley Way #5302, Berkeley, CA 94720, USA.
  • K R Smith
    Division of Environmental Health Sciences, School of Public Health, University of California, Berkeley, 2121 Berkeley Way #5302, Berkeley, CA 94720, USA.