潜在类多标签分类识别疾病亚类以改进预测

A. A. Alyousef, S. Nihtyanova, C. Denton, Pietro Bosoni, R. Bellazzi, A. Tucker
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引用次数: 1

摘要

疾病分型有助于精准医学的发展,但在数据分析中仍然是一个挑战,因为根据数据对个体进行分组的方法有许多不同。然而,确定疾病的亚类将有助于产生对患者更具体的更好的模型,并将改进对疾病潜在特征的预测和解释。本文提出了一种将潜在类模型与监督学习相结合的新算法。新算法使用潜在类模型将患者聚类到组内,从而改进分类,并帮助理解所发现组的差异。这些方法是在系统性硬化症(一种罕见的潜在致命疾病)患者的数据上进行测试的。结果表明,与同类方法相比,“潜在类别多标签分类模型”提高了分类准确率。
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Latent Class Multi-Label Classification to Identify Subclasses of Disease for Improved Prediction
Disease subtyping can assist the development of precision medicine but remains a challenge in data analysis by reason of the many different methods to group individuals depending on their data. However, identification of subclasses of disease will help to produce better models which are more specific to patients and will improve prediction and interpretation of underlying characteristics of disease. This paper presents a novel algorithm that integrates latent class models with supervised learning. The new algorithm uses latent class models to cluster patients within groups that results in improved classification as well as aiding the understanding of the dissimilarities of the discovered groups. The methods are tested on data from patients with Systemic Sclerosis (SSc), a rare potentially fatal condition. Results show that the "Latent Class Multi-Label Classification Model" improves accuracy when compared with competitive similar methods.
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