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DNA ploidy and cell cycle distribution of breast cancer aspirate cells measured by image cytometry and analyzed by artificial neural networks for their prognostic significance

机译:用图像细胞计数法和人工神经网络分析乳腺癌吸出细胞的DNA倍性和细胞周期分布对预后的意义

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摘要

Chromosomal abnormalities are commonly associated with cancer, and their importance in the pathogenesis of the disease has been well recognized. Also recognized in recent years is the possibility that, together with chromosomal abnormalities, DNA ploidy of breast cancer aspirate cells, measured by image cytometric techniques, may correlate with prognosis of the disease. Here, we have examined the use of an artificial neural network to predict: 1) subclinical metastatic disease in the regional lymph nodes and 2) histological assessment, through the analysis of data obtained by image cytometric techniques of fine needle aspirates of breast tumors. The cellular features considered were: 1) DNA ploidy measured in terms of nuclear DNA content as well as by cell cycle distribution; 2) size of the S-phase fraction; and 3) nuclear pleomorphism. A further objective of the study was to analyze individual markers in terms of impact significance on predicting outcome in both cases. DNA ploidy, indicated by cell cycle distribution, was found markedly to influence the prediction of nodal spread of breast cancer, and nuclear pleomorphism to a lesser degree. Furthermore, a comparison between histological assessment and artificial neural network prediction shows a closer correlation between the neural approach and the development of further metastases as indicated in subsequent follow-up, than does histological assessment.
机译:染色体异常通常与癌症有关,人们已充分认识到它们在疾病发病机理中的重要性。近年来还认识到,通过图像细胞计数技术测量的乳腺癌吸出细胞的DNA倍体性与染色体异常一起可能与疾病的预后相关。在这里,我们检查了使用人工神经网络来预测:1)区域淋巴结转移的亚临床转移性疾病; 2)通过对通过乳腺肿瘤细针抽吸物的图像细胞术获得的数据进行分析,进行组织学评估。考虑的细胞特征是:1)根据核DNA含量以及细胞周期分布来测量DNA倍性; 2)S相分数的大小; 3)核多态性。这项研究的另一个目标是分析两种情况下对预测结果影响的显着性。发现由细胞周期分布指示的DNA倍性显着影响乳腺癌淋巴结扩散的预测和较小程度的核多态性。此外,组织学评估与人工神经网络预测之间的比较显示,与后续组织学评估相比,如后续随访所示,神经学方法与进一步转移的发生之间存在更紧密的相关性。

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