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Ovarian cancer stage based detection on convolutional neural network

机译:基于卷积神经网络的卵巢癌分期检测

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Ovarian cancer is the fifth most common cancer affecting women today. Ovarian cancer is a cancer that begins in the ovaries. The ovaries are female generative organs situated in the pelvis, approximately the size of an almond. The ovaries produce eggs (ova) for reproduction. In this research paper, Detect the ovarian cancer and found the stage of the cancer in the malignant cancer image. The proposed algorithm is used to feature extraction technique using SIFT algorithm. Any object there are many features, interesting points on the object, that can be extracted to provide and feature, a description of the object. In genetic algorithm used to optimize the extracted feature with the help of the fitness function. In fitness function depends upon three parameters i.e, each feature, total features and classification error rate. The detection of the ovarian cancer and stages found using a convolutional neural network. The accuracy is achieved with CNN classifier is 98.8% and with SVM is 85.01%. The performance parameters used are Sensitivity Specificity and accuracy.
机译:卵巢癌是当今影响妇女的第五大最常见癌症。卵巢癌是始于卵巢的癌症。卵巢是位于骨盆的女性生殖器官,大约相当于杏仁的大小。卵巢产生卵(ova)进行繁殖。在本研究论文中,检测卵巢癌并在恶性肿瘤图像中发现了癌症的分期。该算法用于SIFT算法的特征提取技术。任何对象都具有许多特征,即对象上的有趣点,可以提取这些特征以提供和描述该对象。在遗传算法中,借助适应度函数来优化提取的特征。适应度函数取决于三个参数,即每个特征,总特征和分类错误率。使用卷积神经网络检测卵巢癌及其分期。 CNN分类器的精度为98.8 \%,SVM为85.01 \%。使用的性能参数是灵敏度特异性和准确性。

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