Multi-Source Survival Domain Adaptation
Ammar Shaker, Carolin Lawrence

TL;DR
This paper introduces a novel domain adaptation method for survival analysis that effectively handles censored data and multiple source domains, improving treatment recommendations and interpretability in medical datasets.
Contribution
It proposes a new survival metric and discrepancy measure for domain adaptation that incorporates censored data, advancing survival analysis techniques.
Findings
Superior performance on cancer datasets
Improved treatment recommendation accuracy
Provides interpretable weight matrices
Abstract
Survival analysis is the branch of statistics that studies the relation between the characteristics of living entities and their respective survival times, taking into account the partial information held by censored cases. A good analysis can, for example, determine whether one medical treatment for a group of patients is better than another. With the rise of machine learning, survival analysis can be modeled as learning a function that maps studied patients to their survival times. To succeed with that, there are three crucial issues to be tackled. First, some patient data is censored: we do not know the true survival times for all patients. Second, data is scarce, which led past research to treat different illness types as domains in a multi-task setup. Third, there is the need for adaptation to new or extremely rare illness types, where little or no labels are available. In contrast…
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Code & Models
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Taxonomy
TopicsMachine Learning in Healthcare · Cancer-related molecular mechanisms research · Domain Adaptation and Few-Shot Learning
