Ying Hao, Lin Feng, MacArthur Rodger D, Cohn Jonathan A, Barth-Jones Daniel C, Ye Hong, Crane Lawrence R
Department of Electrical and Computer Engineering, Wayne State University, Detroit, MI 48202, USA.
IEEE Trans Inf Technol Biomed. 2006 Oct;10(4):663-76. doi: 10.1109/titb.2006.874200.
Treatment decision-making is complex and involves many factors. A systematic decision-making and optimization technology capable of handling variations and uncertainties of patient characteristics and physician's subjectivity is currently unavailable. We recently developed a novel general-purpose fuzzy discrete event systems theory for optimal decision-making. We now apply it to develop an innovative system for medical treatment, specifically for the first round of highly active antiretroviral therapy of human immunodeficiency virus/acquired immunodeficiency syndrome (HIV/AIDS) patients involving three historically widely used regimens. The objective is to develop such a system whose regimen choice for any given patient will exactly match expert AIDS physician's selection to produce the (anticipated) optimal treatment outcome. Our regimen selection system consists of a treatment objectives classifier, fuzzy finite state machine models for treatment regimens, and a genetic-algorithm-based optimizer. The optimizer enables the system to either emulate an individual doctor's decision-making or generate a regimen that simultaneously satisfies diverse treatment preferences of multiple physicians to the maximum extent. We used the optimizer to automatically learn the values of 26 parameters of the models. The learning was based on the consensus of AIDS specialists A and B on this project, whose exact agreement was only 35%. The performance of the resulting models was first assessed. We then carried out a retrospective study of the entire system using all the qualifying patients treated in our institution's AIDS Clinical Center in 2001. A total of 35 patients were treated by 13 specialists using the regimens (four and eight patients were treated by specialists A and B, respectively). We compared the actually prescribed regimens with those selected by the system using the same available information. The overall exact agreement was 82.9% (29 out of 35), with the exact agreement with specialists A and B both at 100%. The exact agreement for the remaining 11 physicians not involved in the system training was 73.9% (17 out of 23), an impressive result given the fact that expert opinion can be quite divergent for treatment decisions of such complexity. Our specialists also carefully examined the six mismatched cases and deemed that the system actually chose a more appropriate regimen for four of them. In the other two cases, either would be reasonable choices. Our approach has the capabilities of generalizing, learning, and representing knowledge even in the face of weak consensus, and being readily upgradeable to new medical knowledge. These are practically important features to medical applications in general, and HIV/AIDS treatment in particular, as national HIV/AIDS treatment guidelines are modified several times per year.
治疗决策复杂且涉及诸多因素。目前尚不存在一种能够处理患者特征的变化和不确定性以及医生主观性的系统决策与优化技术。我们最近开发了一种用于最优决策的新型通用模糊离散事件系统理论。现在我们将其应用于开发一种创新的医疗系统,特别是针对人类免疫缺陷病毒/获得性免疫缺陷综合征(HIV/AIDS)患者的第一轮高效抗逆转录病毒治疗,涉及三种历史上广泛使用的治疗方案。目标是开发这样一种系统,其针对任何给定患者的方案选择将与艾滋病专家医生的选择完全匹配,以产生(预期的)最佳治疗结果。我们的方案选择系统由一个治疗目标分类器、治疗方案的模糊有限状态机模型以及一个基于遗传算法的优化器组成。该优化器使系统能够模拟单个医生的决策,或者生成一个在最大程度上同时满足多位医生不同治疗偏好的方案。我们使用优化器自动学习模型的26个参数的值。学习基于参与该项目的艾滋病专家A和B的共识,而他们的精确一致率仅为35%。首先评估所得模型的性能。然后,我们使用2001年在我们机构的艾滋病临床中心接受治疗的所有符合条件的患者对整个系统进行了回顾性研究。共有35名患者由13名专家使用这些方案进行治疗(专家A和B分别治疗了4名和8名患者)。我们将实际开出的方案与系统使用相同可用信息选择的方案进行了比较。总体精确一致率为82.9%(35例中的29例),与专家A和B的精确一致率均为100%。对于其余未参与系统训练的11名医生,精确一致率为73.9%(23例中的17例),鉴于对于如此复杂的治疗决策,专家意见可能差异很大,这是一个令人印象深刻的结果。我们的专家还仔细检查了6例不匹配的病例,并认为系统实际上为其中4例选择了更合适的方案。在另外2例中,两种方案都是合理的选择。我们的方法具有即使面对微弱共识也能进行泛化、学习和表示知识的能力,并且易于升级以适应新的医学知识。这些对于一般的医疗应用,特别是HIV/AIDS治疗来说,都是非常重要的实际特征,因为国家HIV/AIDS治疗指南每年都会修改几次。