Hierarchical Adaptive Multi-task Learning Framework for Patient Diagnoses and Diagnostic Category Classification.

Salim Malakouti, Milos Hauskrecht
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引用次数: 10

Abstract

The problems a patient suffers from can be summarized in terms of a list of patient diagnoses. The diagnoses are typically organized in a hierarchy (or a lattice structure) in which many different low-level diagnoses are covered by one or more diagnostic categories. An interesting machine learning problem is related to learning of a wide range of diagnostic models (at different levels of abstraction) that can automatically assign a diagnosis or a diagnostic category to a specific patient. While one can always approach this problem by learning models for each diagnostic task independently, an interesting open question is how one can leverage the knowledge of a diagnostic hierarchy to improve the classification and outperform independent diagnostic models. In this work, we study this problem by designing a new hierarchical classification learning framework in which multiple diagnostic classification targets are explicitly related via diagnostic hierarchy relations. By conducting experiments on MIMIC-III data and ICD-9 diagnosis hierarchy, we demonstrate that our framework leads to improved classification performance on individual diagnostic tasks when compared to independently learned diagnostic models. This improvement is stronger for diagnoses with a low prior and smaller number of positive training examples.

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分层自适应多任务学习框架的患者诊断和诊断类别分类。
病人所遭受的问题可以用病人诊断的清单来概括。诊断通常以层次结构(或晶格结构)组织,其中许多不同的低级诊断由一个或多个诊断类别涵盖。一个有趣的机器学习问题与学习广泛的诊断模型(在不同的抽象层次上)有关,这些模型可以自动为特定患者分配诊断或诊断类别。虽然人们总是可以通过独立学习每个诊断任务的模型来解决这个问题,但一个有趣的开放性问题是,人们如何利用诊断层次结构的知识来改进分类并优于独立的诊断模型。在本研究中,我们设计了一个新的分层分类学习框架,其中多个诊断分类目标通过诊断层次关系显式关联。通过对MIMIC-III数据和ICD-9诊断层次进行实验,我们证明,与独立学习的诊断模型相比,我们的框架可以提高单个诊断任务的分类性能。对于低先验和较少数量的正训练样本的诊断,这种改善更强。
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