Edwards F H, Davies R S
Surg Gynecol Obstet. 1984 Mar;158(3):219-22.
One hundred consecutive patients with acute right lower quadrant abdominal pain were prospectively evaluated with a computerized Bayesian diagnostic algorithm. An accuracy rate of 92 per cent was obtained. Computer recommendations would have resulted in a negative exploration rate of 9 per cent, as compared with the rate of 19 per cent which was actually obtained. Even though our clinical management of these patients was in keeping with accepted standards, the Bayesian program would have avoided eight unnecessary operations. In all instances in which the patient presented with appendicitis, the computer correctly predicted that appendicitis was present. Computer-assisted diagnostic programs using a Bayesian approach may have some role in the evaluation of right lower quadrant abdominal pain. The technique presented herein describes a means of developing a database of conditional probabilities without reliance on large patient surveys. Even with this refinement, the Bayesian approach to diagnosis remains complex. The development of this type of program requires close interaction between computer scientists and surgeons. Nevertheless, the approach does appear promising and it may well be worth the considerable effort required to initiate such a system. The exact role for Bayesian diagnostic analysis cannot be predicted at this point. Certainly it should have no greater importance than a routine laboratory test. Perhaps the results of Bayesian analysis in this setting might assume a diagnostic significance similar to that of the white blood cell count. The work of DeDombal has done much to eliminate the physician reluctance seen with earlier programs. It has become increasingly apparent that computers may perform many clinically useful functions without infringing upon the art of medicine. The computer assisted diagnosis of acute abdominal pain may well constitute one such function.
对连续100例急性右下腹疼痛患者采用计算机贝叶斯诊断算法进行前瞻性评估。获得了92%的准确率。计算机给出的建议会使阴性探查率为9%,而实际获得的阴性探查率为19%。尽管我们对这些患者的临床处理符合公认标准,但贝叶斯程序本可避免8例不必要的手术。在所有患者患有阑尾炎的情况下,计算机都正确预测出存在阑尾炎。采用贝叶斯方法的计算机辅助诊断程序在评估右下腹疼痛方面可能会发挥一定作用。本文介绍的技术描述了一种在不依赖大规模患者调查的情况下建立条件概率数据库的方法。即便有了这种改进,贝叶斯诊断方法仍然很复杂。开发这类程序需要计算机科学家和外科医生密切合作。然而,这种方法确实看起来很有前景,启动这样一个系统所需的大量努力可能很值得。目前还无法预测贝叶斯诊断分析的确切作用。当然,它不应比常规实验室检查更重要。也许在这种情况下,贝叶斯分析的结果可能会具有与白细胞计数类似的诊断意义。DeDombal的工作在很大程度上消除了医生对早期程序的抵触情绪。越来越明显的是,计算机可以执行许多临床有用的功能而不会侵犯医学艺术。计算机辅助诊断急性腹痛很可能就是这样一种功能。