Home monitoring with connected mobile devices for asthma attack prediction with machine learning.
Kevin Cheuk Him TsangHilary PinnockAndrew M WilsonDario SalviSyed Ahmar ShahPublished in: Scientific data (2023)
Monitoring asthma is essential for self-management. However, traditional monitoring methods require high levels of active engagement, and some patients may find this tedious. Passive monitoring with mobile-health devices, especially when combined with machine-learning, provides an avenue to reduce management burden. Data for developing machine-learning algorithms are scarce, and gathering new data is expensive. A few datasets, such as the Asthma Mobile Health Study, are publicly available, but they only consist of self-reported diaries and lack any objective and passively collected data. To fill this gap, we carried out a 2-phase, 7-month AAMOS-00 observational study to monitor asthma using three smart-monitoring devices (smart-peak-flow-meter/smart-inhaler/smartwatch), and daily symptom questionnaires. Combined with localised weather, pollen, and air-quality reports, we collected a rich longitudinal dataset to explore the feasibility of passive monitoring and asthma attack prediction. This valuable anonymised dataset for phase-2 of the study (device monitoring) has been made publicly available. Between June-2021 and June-2022, in the midst of UK's COVID-19 lockdowns, 22 participants across the UK provided 2,054 unique patient-days of data.
Keyphrases
- machine learning
- chronic obstructive pulmonary disease
- lung function
- big data
- electronic health record
- allergic rhinitis
- healthcare
- end stage renal disease
- artificial intelligence
- coronavirus disease
- emergency department
- newly diagnosed
- cystic fibrosis
- ejection fraction
- cross sectional
- chronic kidney disease
- case report
- air pollution
- peritoneal dialysis
- patient reported