"How do you know those particles are from cigarettes?": An algorithm to help differentiate second-hand tobacco smoke from background sources of household fine particulate matter

Environ Res. 2018 Oct:166:344-347. doi: 10.1016/j.envres.2018.06.019. Epub 2018 Jun 19.

Abstract

Background: Second-hand smoke (SHS) at home is a target for public health interventions, such as air quality feedback interventions using low-cost particle monitors. However, these monitors also detect fine particles generated from non-SHS sources. The Dylos DC1700 reports particle counts in the coarse and fine size ranges. As tobacco smoke produces far more fine particles than coarse ones, and tobacco is generally the greatest source of particulate pollution in a smoking home, the ratio of coarse to fine particles may provide a useful method to identify the presence of SHS in homes.

Methods: An algorithm was developed to differentiate smoking from smoke-free homes. Particle concentration data from 116 smoking homes and 25 non-smoking homes were used to test this algorithm.

Results: The algorithm correctly classified the smoking status of 135 of the 141 homes (96%), comparing favourably with a test of mean mass concentration.

Conclusions: Applying this algorithm to Dylos particle count measurements may help identify the presence of SHS in homes or other indoor environments. Future research should adapt it to detect individual smoking periods within a 24 h or longer measurement period.

Keywords: Air quality monitoring; Particulate matter; Second-hand smoke; Tobacco smoke exposure.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Air Pollution, Indoor / analysis*
  • Algorithms
  • Environmental Monitoring*
  • Particulate Matter / analysis*
  • Tobacco Products*
  • Tobacco Smoke Pollution / analysis*

Substances

  • Particulate Matter
  • Tobacco Smoke Pollution