Adaptive Discretization for Event PredicTion (ADEPT).
Pubmed ID: 38725587
Pubmed Central ID: PMC11078624
Journal: Proceedings of machine learning research
Publication Date: May 1, 2024
Grants: N01 HC025195, N01 HC095159, U01 NS041588, UL1 RR024156, N01 HC095167, N01 HC095161, N01 HC095164, N01 HC095166, N01 HC095160, N01 HC095169, N01 HC095165, N01 HC095168, N01 HC095163, N01 HC095162, K01 MH127309, T32 HL079896, R01 HL136666, R61 NS120246, R33 NS120246
Authors: Wojdyla D, Hickey J, Henao R, Pencina M, Engelhard M
Cite As: Hickey J, Henao R, Wojdyla D, Pencina M, Engelhard M. Adaptive Discretization for Event PredicTion (ADEPT). Proc Mach Learn Res 2024 May;238:1351-1359.
Studies:
Abstract
Recently developed survival analysis methods improve upon existing approaches by predicting the probability of event occurrence in each of a number pre-specified (discrete) time intervals. By avoiding placing strong parametric assumptions on the event density, this approach tends to improve prediction performance, particularly when data are plentiful. However, in clinical settings with limited available data, it is often preferable to judiciously partition the event time space into a limited number of intervals well suited to the prediction task at hand. In this work, we develop Adaptive Discretization for Event PredicTion (ADEPT) to learn from data a set of cut points defining such a partition. We show that in two simulated datasets, we are able to recover intervals that match the underlying generative model. We then demonstrate improved prediction performance on three real-world observational datasets, including a large, newly harmonized stroke risk prediction dataset. Finally, we argue that our approach facilitates clinical decision-making by suggesting time intervals that are most appropriate for each task, in the sense that they facilitate more accurate risk prediction.