基于胶囊网络的宫颈类型图像分类

Bemedict Wimpy, S. Suyanto
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引用次数: 7

摘要

癌症是世界上最致命的疾病之一。因此,癌症患者的早期治疗被证明是有效的,以降低这种疾病的致死率。例如,宫颈癌,宫颈癌的癌前阶段是通过观察子宫颈上的癌变区来检测的。此外,子宫颈的转化区也有不同的类型。因此,需要技能和经验才能准确地确定哪种类型的子宫颈检测子宫颈癌效率较低。本研究正在创建一个基于Capsule Networks的深度学习模型,用于对阴道镜检查图像进行分类,从而使宫颈癌的检测和治疗更加有效和高效。测试集的准确率为100%,训练集的准确率为94.98%。这项研究的结果超过了其他早期实验的结果
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Classification of Cervical Type Image Using Capsule Networks
Cancer is one of the most lethal disease in the world. Therefore, early treatment of cancerous patient is proofed effective to decrease the lethal rate of this disease. For example, is cervical cancer, the precancerous step of cervical cancer is detected by looking at the cancerous transformation zone on the cervix. Furthermore, there are some different type of cervix regarding to its transformation zone. Therefore skills and experience is needed to be able to precisely determine which type of cervix making detection of cervical cancer is less efficient. This study is creating a deep learning model based on Capsule Networks to classify colposcopy images as a solution to make cervical cancer detection and treatment more effective and efficient. With a result of 100\% accuracy of the test set and 94.98\% accuracy of the train set. This study exceeds the result of other earlier experiments
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