Machine Learning Methods for Predicting Cancer Complications Using Smartphone Sensor Data: A Prospective Study
| Author | Affiliation | |
|---|---|---|
Dargė, Gabrielė | Vytauto Didžiojo universitetas | |
Kasputytė, Gabrielė | Vytauto Didžiojo universitetas | |
Savickas, Paulius | Vytauto Didžiojo universitetas | |
Columbia University | US | |
Bunevičienė, Inesa | Vytauto Didžiojo universitetas | |
Bunevičius, Romas | UAB "Proit" | |
Krikštolaitis, Ričardas | Vytauto Didžiojo universitetas | |
Krilavičius, Tomas | Vytauto Didžiojo Universitetas | |
| Date | Volume | Issue | Start Page | End Page |
|---|---|---|---|---|
2026-01-01 | 16 | 1 | 1 | 18 |
Article No. 249
This article belongs to the Special Issue Artificial Intelligence Applications in Healthcare and Precision Medicine, 2nd Edition
Complications are frequent in cancer patients and contribute to adverse outcomes and higher healthcare costs, underscoring the need for earlier identification and prediction. This study evaluated the feasibility of using passively generated smartphone sensor data to explore early-warning signals of complications and symptom worsening during cancer treatment. A total of 108 patients were continuously monitored using accelerometer, GPS, and screen on/off data collected through the LAIMA application, while symptoms of depression, fatigue, and nausea were assessed every two weeks and complications were confirmed during clinic visits or emergency presentations. Smartphone data streams were aggregated into variables describing activity and sociability patterns. Machine learning models, including Decision Tree, Extreme Gradient Boosting, K-Nearest Neighbors, and Support Vector Machine, were used for complication prediction, and time-series models such as Autoregressive Integrated Moving Average, Holt–Winters, TBATS, Long Short-Term Memory neural network, and General Regression Neural Network were applied to identify early behavioral changes preceding symptom reports. In this exploratory analysis, the ensemble model demonstrated high sensitivity (89%) for identifying complication events. Smartphone-derived behavioral indicators enabled earlier detection of depression, fatigue, and vomiting by about nine days in a subset of patients. These findings demonstrate the feasibility of passive smartphone sensor data as exploratory early-warning signals, warranting validation in larger cohorts.
| URI | Access Rights |
|---|---|
| https://www.mdpi.com/2076-3417/16/1/249 | Viso teksto dokumentas (atviroji prieiga) / Full Text Document (Open Access) |
| https://hdl.handle.net/20.500.12512/256860 |
| Name | ID |
|---|---|
state budget of the Republic of Lithuania financial agreement | 10-042-P-0001 |
European Union under Horizon Europe program | 101059903 |
European Union funds for the period 2021-2027 |