TY - GEN
T1 - Leveraging Convolutional Neural Networks for Predicting Symptom Escalation in Chemotherapy Patients
T2 - 2024 International Conference on Informatics, Management, and Technology in Healthcare, ICIMTH 2024
AU - Finkelstein, Joseph
AU - Smiley, Aref
AU - Echeverria, Christina
AU - Mooney, Kathi
N1 - Publisher Copyright:
© 2025 The Authors.
PY - 2025/4/8
Y1 - 2025/4/8
N2 - This paper introduces a novel approach for predicting symptom escalation in chemotherapy patients by leveraging Convolutional Neural Networks (CNNs). Accurate forecasting of symptom escalation is crucial in cancer care, as it enables timely interventions and enhances symptom management, ultimately improving patients' quality of life during treatment. The analytical dataset consists of daily self-reported symptom logs from chemotherapy patients, capturing a variety of symptoms such as nausea, fatigue, and pain. However, the data was significantly imbalanced, with approximately 84% of entries showing no symptom escalation. To address this issue and enhance the model's ability to identify symptom escalation, the data was resampled into varying interval lengths, ranging from 3 to 7 days. This resampling allows the model to detect notable changes in symptom severity over different time frames. The study's results show that shorter intervals (3 days) delivered the best performance, achieving an accuracy of 79%, a precision of 85%, a recall of 79%, and an F1 score of 82%. As the interval length increased, both accuracy and recall declined, though precision remained relatively consistent. These findings illustrate the capability of CNN-based models to capture temporal patterns in symptom progression effectively.
AB - This paper introduces a novel approach for predicting symptom escalation in chemotherapy patients by leveraging Convolutional Neural Networks (CNNs). Accurate forecasting of symptom escalation is crucial in cancer care, as it enables timely interventions and enhances symptom management, ultimately improving patients' quality of life during treatment. The analytical dataset consists of daily self-reported symptom logs from chemotherapy patients, capturing a variety of symptoms such as nausea, fatigue, and pain. However, the data was significantly imbalanced, with approximately 84% of entries showing no symptom escalation. To address this issue and enhance the model's ability to identify symptom escalation, the data was resampled into varying interval lengths, ranging from 3 to 7 days. This resampling allows the model to detect notable changes in symptom severity over different time frames. The study's results show that shorter intervals (3 days) delivered the best performance, achieving an accuracy of 79%, a precision of 85%, a recall of 79%, and an F1 score of 82%. As the interval length increased, both accuracy and recall declined, though precision remained relatively consistent. These findings illustrate the capability of CNN-based models to capture temporal patterns in symptom progression effectively.
KW - Chemotherapy Patients
KW - Predictive Modeling
KW - Symptom Management
UR - https://www.scopus.com/pages/publications/105003275739
UR - https://www.scopus.com/pages/publications/105003275739#tab=citedBy
U2 - 10.3233/SHTI250046
DO - 10.3233/SHTI250046
M3 - Conference contribution
C2 - 40200443
AN - SCOPUS:105003275739
T3 - Studies in Health Technology and Informatics
SP - 45
EP - 49
BT - Envisioning the Future of Health Informatics and Digital Health
A2 - Mantas, John
A2 - Hasman, Arie
A2 - Zoulias, Emmanouil
A2 - Karitis, Konstantinos
A2 - Gallos, Parisis
A2 - Diomidous, Marianna
A2 - Zogas, Spyridon
A2 - Charalampidou, Martha
PB - IOS Press BV
Y2 - 13 December 2024 through 15 December 2024
ER -