TY - GEN
T1 - Active Testing for an Emerging Epidemic
AU - Mann, Ariana J.
AU - Bistritz, Ilai
AU - Bambos, Nicholas
N1 - Publisher Copyright: © 2022 IEEE.
PY - 2022
Y1 - 2022
N2 - Identifying disease carriers is a key barrier to effectively control an epidemic outbreak, especially when many carriers are asymptomatic, have minor symptoms, or have a delayed symptom onset. Current isolation policies largely operate at the two ends of the spectrum: isolate almost everyone (lock-down) or isolate only those with severe symptoms. This leads to high misclassification costs. To address this issue, we develop an active learning approach. Active learning is useful when labeling is expensive and there is a limited budget; an active learning algorithm selects which data points to label in order to build the best training dataset for machine learning. We present the novel Active Testing protocol to combine 1) an online, disease-carrier classification model trained on symptom data paired with 2) an active learning based disease testing policy, that results in lower misclassification costs than either of the two extreme isolation policies. Coupling these two components enables our protocol to pick the best testing kit allocation policy to train the carrier classification model and minimize the total decision-theoretic, isolation misclassification cost. We accomplish this with a novel, cost-aware active learning algorithm, and demonstrate its effectiveness compared to existing algorithms in the class-imbalanced setting of disease-carrier classification.
AB - Identifying disease carriers is a key barrier to effectively control an epidemic outbreak, especially when many carriers are asymptomatic, have minor symptoms, or have a delayed symptom onset. Current isolation policies largely operate at the two ends of the spectrum: isolate almost everyone (lock-down) or isolate only those with severe symptoms. This leads to high misclassification costs. To address this issue, we develop an active learning approach. Active learning is useful when labeling is expensive and there is a limited budget; an active learning algorithm selects which data points to label in order to build the best training dataset for machine learning. We present the novel Active Testing protocol to combine 1) an online, disease-carrier classification model trained on symptom data paired with 2) an active learning based disease testing policy, that results in lower misclassification costs than either of the two extreme isolation policies. Coupling these two components enables our protocol to pick the best testing kit allocation policy to train the carrier classification model and minimize the total decision-theoretic, isolation misclassification cost. We accomplish this with a novel, cost-aware active learning algorithm, and demonstrate its effectiveness compared to existing algorithms in the class-imbalanced setting of disease-carrier classification.
UR - http://www.scopus.com/inward/record.url?scp=85146261457&partnerID=8YFLogxK
U2 - https://doi.org/10.1109/HealthCom54947.2022.9982784
DO - https://doi.org/10.1109/HealthCom54947.2022.9982784
M3 - منشور من مؤتمر
T3 - 2022 IEEE International Conference on E-Health Networking, Application and Services, HealthCom 2022
SP - 7
EP - 12
BT - 2022 IEEE International Conference on E-Health Networking, Application and Services, HealthCom 2022
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2022 IEEE International Conference on E-health Networking, Application and Services, HealthCom 2022
Y2 - 17 October 2022 through 19 October 2022
ER -