Karakitsos P, Ioakim-Liossi A, Pouliakis A, Botsoli-Stergiou E M, Tzivras M, Archimandritis A, Kyrkou K
Department of Clinical Cytology and Cytogenetics, Laiko Hospital, Athens, Greece.
Cytopathology. 1998 Apr;9(2):114-25.
A prospective study was undertaken to investigate the potential value of morphometry and artificial neural networks (ANN) for the discrimination of benign and malignant gastric lesions. Two thousand five hundred cells from 23 cases of cancer, 19 cases of gastritis and 58 cases of ulcer were selected as a training set, and an additional 8524 cells from an equal number of cases of cancer, gastritis and ulcer were used as a test set. Images of routine processed gastric smears stained by the Papanicolaou technique were processed by a custom image analysis system. The application of the learning vector quantization (LVQ) classifier enabled correct classification of > 97% of benign cells and > 95% of malignant cells, obtaining an overall accuracy of > 97%. This study presents the capabilities of ANN, and also indicates that ANN and image morphometry may offer useful information on the potential of malignancy in gastric cells.
开展了一项前瞻性研究,以调查形态计量学和人工神经网络(ANN)在鉴别胃良性和恶性病变方面的潜在价值。从23例癌症、19例胃炎和58例溃疡患者中选取2500个细胞作为训练集,并从相同数量的癌症、胃炎和溃疡患者中选取另外8524个细胞作为测试集。采用巴氏染色法对常规处理的胃涂片进行图像采集,并通过定制的图像分析系统进行处理。学习向量量化(LVQ)分类器的应用能够正确分类>97%的良性细胞和>95%的恶性细胞,总体准确率>97%。本研究展示了人工神经网络的能力,也表明人工神经网络和图像形态计量学可能为胃细胞恶性潜能提供有用信息。