Computational Framework of Inverted Fuzzy C-Means and Quantum Convolutional Neural Network Towards Accurate Detection of Ovarian Tumors

Ashwini Kodipalli, S. Fernandes, Santosh K. Dasar, Taha Ismail
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引用次数: 7

Abstract

Due to the advancements in the lifestyle, stress builds enormously among individuals. A few recent studies have indicated that stress is a major contributor for infertility and subsequent ovarian cancer among women of reproductive age. In view of this, the present study proposes a two-stage computational methodology to identify and segment the ovarian tumour and classify it as benign or malignant. Using computerized tomography images, the first stage involves image segmentation using inverted fuzzy c-Means clustering, and second stage consists of deep quantum convolutional neural network in order to detect the tumours. The efficacy of the proposed method is demonstrated using in-house clinically collected dataset by comparing the results with the state-of-the-art methods. The experimental results confirm that the proposed approach outperforms the existing fuzzy C means algorithm by achieving the average Jaccard score of (0.65, 0.84, 0.79) (min, max, avg) and Dice score of (0.70, 0.83, 0.77) (min, max, avg), classification result of 78% for benign and 70.03% for malignant tumours. The classification results using the variant of convolutional neural network (CNN) model ResNet16 are compared with the quantum convolutional neural networks (QCNN) and obtained the classification performance of 87.02% for benign and 79.4% for malignant tumours and 84.4% for benign and 77.03% for malignant tumours respectively.
基于倒模糊c均值和量子卷积神经网络的卵巢肿瘤精确检测计算框架
由于生活方式的进步,压力在个人之间不断增加。最近的一些研究表明,压力是育龄妇女不孕症和随后的卵巢癌的主要原因。鉴于此,本研究提出了一种两阶段的计算方法来识别和分割卵巢肿瘤,并将其分类为良性或恶性。利用计算机断层扫描图像,第一阶段包括使用倒模糊c均值聚类进行图像分割,第二阶段包括深度量子卷积神经网络以检测肿瘤。通过将结果与最先进的方法进行比较,使用内部临床收集的数据集证明了所提出方法的有效性。实验结果证实,该方法优于现有的模糊C均值算法,Jaccard平均得分为(0.65,0.84,0.79)(min, max, avg), Dice平均得分为(0.70,0.83,0.77)(min, max, avg),良性肿瘤的分类结果为78%,恶性肿瘤的分类结果为70.03%。使用卷积神经网络(CNN)模型的变体ResNet16与量子卷积神经网络(QCNN)的分类结果进行比较,良性肿瘤和恶性肿瘤的分类性能分别为87.02%和79.4%,良性肿瘤和恶性肿瘤的分类性能分别为84.4%和77.03%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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