Kazi J I, Furness P N, Nicholson M
Department of Pathology, Leicester General Hospital, UK.
J Clin Pathol. 1998 Feb;51(2):108-13. doi: 10.1136/jcp.51.2.108.
The development of the Banff classification of renal transplant pathology has allowed the standardisation of approaches to transplant biopsy histology and reduced interobserver and interdepartmental variation. The usefulness of the Banff classification in the diagnosis of acute rejection has previously been tested by sending sections from 21 "difficult" biopsies to almost all of the renal transplant pathologists in the UK. Although the Banff classification improved reproducibility, the accuracy of diagnosis of early acute rejection was unchanged from the "conventional" approach. Perhaps this is because in making a diagnosis of acute rejection, the Banff classification uses only two features: tubulitis and intimal arteritis. To include more features on a systematic basis would be laborious for a human observer. Therefore, a Bayesian belief network was developed for this task.
The network was initialised with observations from 110 transplant biopsies. Its performance was then tested on 21 biopsies that had been seen by 37 different renal transplant pathologists in an earlier study. These biopsies had been selected to represent histologically difficult problems but, in retrospect, they all had clear diagnoses of rejection or non-rejection on clinical grounds.
Using the Bayesian belief network, a relatively inexperienced pathologist made 19 of 21 correct diagnoses, better than had been achieved by any of the pathologists who had seen the same sections previously (17 of 21), and considerably better than the average proportion of correct diagnoses provided by all 37 renal transplant pathologists (65%). Application of the system by a second pathologist produced a tendency to overdiagnosis of acute rejection, illustrating the consequences of interobserver variation.
In the diagnosis of acute rejection, further useful information can be extracted from features that are currently not considered in the Banff classification. Integration of data by a computer can give a more reliable diagnosis of early acute rejection, but routine application will require the development of a more sophisticated system that can also accommodate clinical data, perhaps one that can continue to "learn" as more data are entered.
肾移植病理的班夫分类法的发展使得移植活检组织学检查方法得以标准化,并减少了观察者间和部门间的差异。此前通过将21例“疑难”活检切片分发给英国几乎所有的肾移植病理学家,对班夫分类法在急性排斥反应诊断中的实用性进行了测试。尽管班夫分类法提高了可重复性,但早期急性排斥反应的诊断准确性与“传统”方法并无差异。这可能是因为在诊断急性排斥反应时,班夫分类法仅使用了两个特征:肾小管炎和内膜动脉炎。要系统地纳入更多特征,对于人工观察者来说会很繁琐。因此,为此任务开发了一个贝叶斯信念网络。
该网络用110例移植活检的观察结果进行初始化。然后在21例活检切片上测试其性能,这些活检切片在早期研究中被37位不同的肾移植病理学家看过。选择这些活检切片是为了代表组织学上的疑难问题,但事后看来,它们在临床基础上都有明确的排斥或非排斥诊断。
使用贝叶斯信念网络,一位经验相对不足的病理学家在21例诊断中做出了19例正确诊断,比之前看过相同切片的任何病理学家(21例中的17例)都要好,并且比所有37位肾移植病理学家提供的正确诊断平均比例(65%)要好得多。第二位病理学家应用该系统产生了急性排斥反应过度诊断的倾向,说明了观察者间差异的后果。
在急性排斥反应的诊断中,可以从班夫分类法目前未考虑的特征中提取更多有用信息。通过计算机整合数据可以对早期急性排斥反应做出更可靠的诊断,但常规应用将需要开发一个更复杂的系统,该系统还可以纳入临床数据,也许是一个随着输入更多数据能够继续“学习”的系统。