School of ITEE, The University of Queensland, Australia.
Bone Dysplasia Research Group, UQ Centre for Clinical Research (UQCCR), The University of Queensland, Australia; Genetic Health Queensland, Royal Brisbane and Women's Hospital, Herston, Australia.
J Biomed Inform. 2014 Apr;48:73-83. doi: 10.1016/j.jbi.2013.12.001. Epub 2013 Dec 10.
Finding, capturing and describing characteristic features represents a key aspect in disorder definition, diagnosis and management. This process is particularly challenging in the case of rare disorders, due to the sparse nature of data and expertise. From a computational perspective, finding characteristic features is associated with some additional major challenges, such as formulating a computationally tractable definition, devising appropriate inference algorithms or defining sound validation mechanisms. In this paper we aim to deal with each of these problems in the context provided by the skeletal dysplasia domain. We propose a clear definition for characteristic phenotypes, we experiment with a novel, class association rule mining algorithm and we discuss our lessons learned from both an automatic and human-based validation of our approach.
发现、捕捉和描述特征是疾病定义、诊断和管理的关键方面。在罕见疾病的情况下,由于数据和专业知识的稀缺性,这个过程特别具有挑战性。从计算的角度来看,找到特征与一些额外的主要挑战相关联,例如制定一个计算上可处理的定义、设计适当的推理算法或定义合理的验证机制。在本文中,我们旨在在骨骼发育不良领域提供的背景下处理这些问题。我们为特征表型提出了一个明确的定义,我们尝试了一种新颖的、类关联规则挖掘算法,并讨论了我们从自动和基于人工的方法验证中获得的经验教训。