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前列腺上皮内瘤变(PIN)。贝叶斯信念网络在诊断和分级中的应用。

Prostatic intraepithelial neoplasia (PIN). Performance of Bayesian belief network for diagnosis and grading.

作者信息

Montironi R, Bartels P H, Thompson D, Scarpelli M, Hamilton P W

机构信息

Institute of Pathological Anatomy and Histopathology, University of Ancona, Italy.

出版信息

J Pathol. 1995 Oct;177(2):153-62. doi: 10.1002/path.1711770209.

Abstract

Prostatic intraepithelial neoplasia (PIN) diagnosis and grading are affected by uncertainties which arise from the fact that almost all knowledge of PIN histopathology is expressed in concepts, descriptive linguistic terms, and words. A Bayesian belief network (BBN) was therefore used to reduce the problem of uncertainty in diagnostic clue assessment, while still considering the dependences between elements in the reasoning sequence. A shallow network was used with an open-tree topology, with eight first-level descendant nodes for the diagnostic clues (evidence nodes), each independently linked by a conditional probability matrix to a root node containing the diagnostic alternatives (decision node). One of the evidence nodes was based on the tissue architecture and the others were based on cell features. The system was designed to be interactive, in that the histopathologist entered evidence into the network in the form of likelihood ratios for outcomes at each evidence node. The efficiency of the network was tested on a series of 110 prostate specimens, subdivided as follows: 22 cases of non-neoplastic prostate or benign prostatic tissue (NP), 22 PINs of low grade (PINlow), 22 PINs of high grade (PINhigh), 22 prostatic adenocarcinomas with cribriform pattern (PACcri), and 22 prostatic adenocarcinomas with large acinar pattern (PAClgac). The results obtained in the benign and malignant categories showed that the belief for the diagnostic alternatives is very high, the values being in general more than 0.8 and often close to 1.0. When considering the PIN lesions, the network classified and graded most of the cases with high certainty. However, there were some cases which showed values less than 0.8 (13 cases out of 44), thus indicating that there are situations in which the feature changes are intermediate between contiguous categories or grades. Discrepancy between morphological grading and the BBN results was observed in four out of 44 PIN cases: one PINlow was classified as PINhigh and three PINhigh were classified as PINlow. In conclusion, the network can grade PIN lesions and differentiate them from other prostate lesions with certainty. In particular, it offers a descriptive classifier which is readily implemented and which allows the use of linguistic, fuzzy variables.

摘要

前列腺上皮内瘤变(PIN)的诊断和分级受到不确定性的影响,这些不确定性源于几乎所有关于PIN组织病理学的知识都是用概念、描述性语言术语和词汇来表达的这一事实。因此,采用贝叶斯信念网络(BBN)来减少诊断线索评估中的不确定性问题,同时仍考虑推理序列中各元素之间的依赖性。使用了一个具有开放树拓扑结构的浅层网络,有八个用于诊断线索(证据节点)的一级后代节点,每个节点通过条件概率矩阵独立地与一个包含诊断选项(决策节点)的根节点相连。其中一个证据节点基于组织结构,其他节点基于细胞特征。该系统设计为交互式的,即组织病理学家以每个证据节点结果的似然比形式将证据输入网络。在一系列110个前列腺标本上测试了该网络的效率,这些标本分为以下几类:22例非肿瘤性前列腺或良性前列腺组织(NP)、22例低级别PIN(PINlow)、22例高级别PIN(PINhigh)、22例筛状型前列腺腺癌(PACcri)和22例大腺泡型前列腺腺癌(PAClgac)。在良性和恶性类别中获得的结果表明,对诊断选项的信念非常高,一般值大于0.8,且常常接近1.0。在考虑PIN病变时,网络对大多数病例进行了高度确定的分类和分级。然而,有一些病例的值小于0.8(44例中有13例),这表明存在特征变化介于相邻类别或级别之间的情况。在44例PIN病例中有4例观察到形态学分级与BBN结果之间存在差异:1例PINlow被分类为PINhigh,3例PINhigh被分类为PINlow。总之,该网络可以对PIN病变进行分级,并确定地将其与其他前列腺病变区分开来。特别是,它提供了一种易于实现的描述性分类器,允许使用语言、模糊变量。

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