Mammographic Mass Detection Based on Data Separated Ensemble Convolution Neural Network

ShihCheng Kuo, Osamu Honda
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Abstract

The number of female deaths caused by breast cancer each year is the second of all causes of death. According to the International Agency for Cancer's Research, early diagnosis can effectively reduce breast cancer mortality. Therefore, our study attempts to construct an automatic X-ray image detection system to help radiologists Interpret the image content to improve the accuracy of diagnosis. In recent years, the development goal of convolutional neural networks is to achieve relatively good accuracy with the least amount of calculation to meet the actual application situation, but ignore the application fields that do not emphasize real-time calculation. Our research will try to use ensemble learning methods to integrate several Efficientnets through two integrated strategies to improve the accuracy of the model. Our study used the DDSM data set, which contains 1329 cases and 5316 digital X-ray images. 641 patients were diagnosed as negative and 688 were diagnosed with benign or malignant tumors. Experimental results show that the accuracy and recall rate of the model can be improved through ensemble learning. The framework proposed in this experiment also achieves an accuracy rate of 87.6 and a recall rate of 91.8%.
基于数据分离集成卷积神经网络的乳腺肿块检测
每年因乳腺癌导致的女性死亡人数在所有死亡原因中排名第二。根据国际癌症研究机构的研究,早期诊断可以有效降低乳腺癌的死亡率。因此,我们的研究试图构建一个自动x射线图像检测系统,帮助放射科医生解读图像内容,以提高诊断的准确性。近年来,卷积神经网络的发展目标是以最少的计算量达到相对较好的精度来满足实际应用情况,而忽略了不强调实时计算的应用领域。我们的研究将尝试使用集成学习方法,通过两种集成策略整合多个高效网络,以提高模型的准确性。我们的研究使用了DDSM数据集,其中包含1329例病例和5316张数字x射线图像。641例诊断为阴性,688例诊断为良恶性肿瘤。实验结果表明,通过集成学习可以提高模型的准确率和召回率。本实验提出的框架也达到了87.6的准确率和91.8%的召回率。
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