Department of Information Management, Hwa Hsia Institute of Technology, Chung Ho District, New Taipei City, Taiwan.
Comput Biol Med. 2012 Aug;42(8):826-40. doi: 10.1016/j.compbiomed.2012.06.006. Epub 2012 Jul 15.
A critical option of total hip arthroplasty (THA) is considered only when tried more conservative treatments but continued to have pain, stiffness, or problems with the function of ones hip. THA plays one of major concerns under the waves of the rapid growth of aging populations and the constrained health care resources in Taiwan. Moreover, prior studies indicated that imbalanced class distribution problems do exist in the constructed classification model and cause seriously negative effects on model performances in the health care industry. Therefore, this study proposes an integrated hybrid approach to provide an alternate method for classifying the quality (e.g., the staying length in hospital) of medical practice with an imbalanced class problem after performing a THA procedure for hip replacement patients and their doctors in the health care industry. The proposed approach is constituted by seven components: expert knowledge, global discretization, imbalanced bootstrap technique, reduct and core methods, rough sets, rule induction, and rule filter. The proposed approach is illustrated in practice by examining an experimental dataset from the National Health Insurance Research Database (NHIRD) in Taiwan. The experimental results reveal that the proposed approach has better performance than the listed methods under evaluation criteria. The output created by the rough set LEM2 algorithm is a comprehensible decision rule set that can be applied in knowledge-based health care services as desired. The analytical results provide useful THA information for both academics and practitioners and these results could be applicable to other diseases or to other countries with similar social and cultural practices.
全髋关节置换术 (THA) 是一种关键选择,只有在尝试了更保守的治疗方法但仍有疼痛、僵硬或髋关节功能问题时才会考虑。THA 是台湾人口快速老龄化和医疗保健资源有限的浪潮下的主要关注点之一。此外,先前的研究表明,构建的分类模型中确实存在不平衡的类别分布问题,这会对医疗保健行业中的模型性能产生严重的负面影响。因此,本研究提出了一种集成混合方法,为医疗保健行业中的髋关节置换患者及其医生在执行 THA 手术后提供一种替代方法,用于分类医疗实践的质量(例如,住院时间),该方法存在不平衡的类别问题。该方法由七个组件组成:专家知识、全局离散化、不平衡引导技术、约简和核心方法、粗糙集、规则归纳和规则过滤。该方法通过检查来自台湾全民健康保险研究数据库 (NHIRD) 的实验数据集在实践中进行说明。实验结果表明,在所评估的标准下,所提出的方法比列出的方法具有更好的性能。粗糙集 LEM2 算法的输出是一个可理解的决策规则集,可以根据需要应用于基于知识的医疗保健服务中。分析结果为学者和从业者提供了有用的 THA 信息,这些结果可适用于其他疾病或具有类似社会和文化实践的其他国家。