Papaconstantinou C, Theocharous G, Mahadevan S
H. Lee Moffitt Cancer Center & Research Institute, University of South Florida, Tampa 33612, USA.
J Med Syst. 1998 Jun;22(3):189-202. doi: 10.1023/a:1022667800953.
Assigning patients into clinical trials is a knowledge and data intensive task. Eligibility determination for entry into a clinical trial is based upon specific inclusion and exclusion criteria. This paper investigates the use of an excerpt system to assist the physician through this task. This expert system uses Bayesian networks, a probabilistic method that can take advantage of pre-existing statistical knowledge. The paper also describes the feasibility of such a system by presenting the implementation of three clinical protocols. The experimental results reveal that the approach is feasible. The system gives correct eligibility scores when all evidence is available but also predicts eligibility when there is missing evidence. The system directs the physician to the protocols the patient is most eligible for, according to the current evidence. The system has the ability of learning its prior and conditional probabilities (expert knowledge) from training examples.
将患者分配到临床试验中是一项知识和数据密集型任务。确定进入临床试验的资格是基于特定的纳入和排除标准。本文研究了使用一个专家系统来协助医生完成这项任务。这个专家系统使用贝叶斯网络,这是一种可以利用预先存在的统计知识的概率方法。本文还通过介绍三个临床方案的实施情况来描述这种系统的可行性。实验结果表明该方法是可行的。当所有证据都可用时,该系统能给出正确的资格评分,而且在存在缺失证据时也能预测资格。该系统根据当前证据将医生引导至患者最符合资格的方案。该系统有能力从训练示例中学习其先验概率和条件概率(专家知识)。