Interpretable (not just posthoc-explainable) heterogeneous survivors bias-corrected treatment effects for assignment of postdischarge interventions to prevent readmissions

Hongjing Xia, Joshua C. Chang, Sarah Nowak, Sonya Mahajan, Rohit Mahajan, Ted L. Chang, Carson C. Chow
Proceedings of the 8th Machine Learning for Healthcare Conference, PMLR 219:884-905, 2023.

Abstract

We used survival analysis to quantify the impact of postdischarge evaluation and management (E/M) services in preventing hospital readmission or death. Our approach avoids a common pitfall when applying machine learning to this problem: inflated treatment effect estimates due to survivors bias – where the magnitude of inflation may be conditional on heterogeneous confounders in the population. This bias arises simply because in order to receive an intervention after discharge, a person must not have been readmitted in the intervening period. After deriving an expression for the phantom effect due to survivors bias, we controlled for this and other biases within an inherently interpretable model that quilts together linear functions using Bayesian multilevel modeling. We identified case management services as being the most impactful for reducing readmissions overall.

Cite this Paper


BibTeX
@InProceedings{pmlr-v219-xia23a, title = {Interpretable (not just posthoc-explainable) heterogeneous survivors bias-corrected treatment effects for assignment of postdischarge interventions to prevent readmissions}, author = {Xia, Hongjing and Chang, Joshua C. and Nowak, Sarah and Mahajan, Sonya and Mahajan, Rohit and Chang, Ted L. and Chow, Carson C.}, booktitle = {Proceedings of the 8th Machine Learning for Healthcare Conference}, pages = {884--905}, year = {2023}, editor = {Deshpande, Kaivalya and Fiterau, Madalina and Joshi, Shalmali and Lipton, Zachary and Ranganath, Rajesh and Urteaga, Iñigo and Yeung, Serene}, volume = {219}, series = {Proceedings of Machine Learning Research}, month = {11--12 Aug}, publisher = {PMLR}, pdf = {https://proceedings.mlr.press/v219/xia23a/xia23a.pdf}, url = {https://proceedings.mlr.press/v219/xia23a.html}, abstract = {We used survival analysis to quantify the impact of postdischarge evaluation and management (E/M) services in preventing hospital readmission or death. Our approach avoids a common pitfall when applying machine learning to this problem: inflated treatment effect estimates due to survivors bias – where the magnitude of inflation may be conditional on heterogeneous confounders in the population. This bias arises simply because in order to receive an intervention after discharge, a person must not have been readmitted in the intervening period. After deriving an expression for the phantom effect due to survivors bias, we controlled for this and other biases within an inherently interpretable model that quilts together linear functions using Bayesian multilevel modeling. We identified case management services as being the most impactful for reducing readmissions overall.} }
Endnote
%0 Conference Paper %T Interpretable (not just posthoc-explainable) heterogeneous survivors bias-corrected treatment effects for assignment of postdischarge interventions to prevent readmissions %A Hongjing Xia %A Joshua C. Chang %A Sarah Nowak %A Sonya Mahajan %A Rohit Mahajan %A Ted L. Chang %A Carson C. Chow %B Proceedings of the 8th Machine Learning for Healthcare Conference %C Proceedings of Machine Learning Research %D 2023 %E Kaivalya Deshpande %E Madalina Fiterau %E Shalmali Joshi %E Zachary Lipton %E Rajesh Ranganath %E Iñigo Urteaga %E Serene Yeung %F pmlr-v219-xia23a %I PMLR %P 884--905 %U https://proceedings.mlr.press/v219/xia23a.html %V 219 %X We used survival analysis to quantify the impact of postdischarge evaluation and management (E/M) services in preventing hospital readmission or death. Our approach avoids a common pitfall when applying machine learning to this problem: inflated treatment effect estimates due to survivors bias – where the magnitude of inflation may be conditional on heterogeneous confounders in the population. This bias arises simply because in order to receive an intervention after discharge, a person must not have been readmitted in the intervening period. After deriving an expression for the phantom effect due to survivors bias, we controlled for this and other biases within an inherently interpretable model that quilts together linear functions using Bayesian multilevel modeling. We identified case management services as being the most impactful for reducing readmissions overall.
APA
Xia, H., Chang, J.C., Nowak, S., Mahajan, S., Mahajan, R., Chang, T.L. & Chow, C.C.. (2023). Interpretable (not just posthoc-explainable) heterogeneous survivors bias-corrected treatment effects for assignment of postdischarge interventions to prevent readmissions. Proceedings of the 8th Machine Learning for Healthcare Conference, in Proceedings of Machine Learning Research 219:884-905 Available from https://proceedings.mlr.press/v219/xia23a.html.

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