基于光磁谱图像的宫颈癌检测深度学习算法

B. Jeftic, I. Hut, I. Stanković, Jovana Šakota Rosić, L. Matija, Đ. Koruga
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引用次数: 0

摘要

为了进一步研究光磁成像光谱在宫颈癌检测中的性能,采用深度学习算法对样本的光磁光谱进行分类。光磁光谱反映细胞特性,根据这些特性,可以区分正常细胞与表现出不同程度发育不良的细胞和癌细胞。在之前的一项研究中,光磁成像光谱在宫颈癌检测中具有很高的准确性、敏感性和特异性,特别是在二元分类的情况下。在四类分类的情况下,准确率略低。与传统机器学习分类算法相比,本文提出的深度学习算法准确率相近(80%),灵敏度更高(83.3%),特异性百分比相近(78%)。
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DEEP LEARNING ALGORITHM FOR CERVICAL CANCER DETECTION BASED ON IMAGES OF OPTOMAGNETIC SPECTRA
In order to further investigate performance of Optomagnetic Imaging Spectroscopy in cervical cancer detection, deep learning algorithm has been used for classification of optomagnetic spectra of the samples. Optomagnetic spectra reflect cell properties and based on those properties it is possible to differentiate normal cells from cells showing different levels of dysplasia and cancer cells. In one of the previous research, Optomagnetic imaging spectroscopy has demonstrated high percentages of accuracy, sensitivity and specificity in cervical cancer detection, particularly in the case of binary classification. Somewhat lower accuracy percentages were obtained in the case of four class classification. Compared to the results obtained by conventional machine learning classification algorithms, proposed deep learning algorithm achieves similar accuracy results (80%), greater sensitivity (83.3%), and comparable specificity percentages (78%).
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