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首页> 外文期刊>Folia histochemica et cytobiologica >New automated image analysis method for the assessment of Ki-67 labeling index in meningiomas.
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New automated image analysis method for the assessment of Ki-67 labeling index in meningiomas.

机译:用于评估脑膜瘤Ki-67标记指数的新型自动图像分析方法。

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Many studies have emphasised the importance of Ki-67 labeling index (LI) as the proliferation marker in meningiomas. Several authors confirmed, that Ki-67 LI has prognostic significance and correlates with likelihood of tumour recurrences. These observations were widely accepted by pathologists, but up till now no standard method for Ki-67 LI assessment was developed and introduced for the diagnostic pathology. In this paper we present a new computerised system for automated Ki-67 LI estimation in meningiomas as an aid for histological grading of meningiomas and potential standard method of Ki-67 LI assessment. We also discuss the concordance of Ki-67 LI results obtained by presented computerized system and expert pathologist, as well as possible pitfalls and mistakes in automated counting of immunopositive or negative cells. For the quantitative evaluation of digital images of meningiomas the designed software uses an algorithm based on mathematical description of cell morphology. This solution acts together with the Support Vector Machine (SVM) used in the classification mode for the recognition of immunoreactivity of cells. The applied sequential thresholding simulated well the human process of cell recognition. The same digital images of randomly selected tumour areas were parallelly analysed by computer and blindly by two expert pathologists. Ki-67 labeling indices were estimated and the results compared. The mean relative discrepancy between the levels of Ki-67 LI by our system and by the human expert did not exceed 14% in all investigated cases. These preliminary results suggest that the designed software could be an useful tool supporting the diagnostic digital pathology. However, more extended studies are needed for approval of this suggestion.
机译:许多研究强调了Ki-67标记指数(LI)作为脑膜瘤增殖标记的重要性。几位作者证实,Ki-67 LI具有预后意义,并与肿瘤复发的可能性相关。这些观察结果被病理学家广泛接受,但是直到现在,还没有开发出用于Ki-67 LI评估的标准方法并将其引入诊断病理学。在本文中,我们提出了一种新的计算机化系统,用于脑膜瘤的自动Ki-67 LI估计,有助于脑膜瘤的组织学分级和Ki-67 LI评估的潜在标准方法。我们还将讨论由提出的计算机系统和专家病理学家获得的Ki-67 LI结果的一致性,以及免疫阳性或阴性细胞自动计数中可能出现的陷阱和错误。为了定量评估脑膜瘤的数字图像,设计的软件使用了基于细胞形态学数学描述的算法。该解决方案与分类模式中使用的支持向量机(SVM)一起起作用,以识别细胞的免疫反应性。所应用的顺序阈值很好地模拟了人类的细胞识别过程。随机选择的肿瘤区域的相同数字图像由计算机并行分析,并由两名专业病理学家盲目分析。估计Ki-67标记指数并比较结果。在我们调查的所有病例中,我们系统和专家得出的Ki-67 LI水平之间的平均相对差异不超过14%。这些初步结果表明,所设计的软件可能是支持诊断数字病理学的有用工具。但是,需要更广泛的研究来批准该建议。

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