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Diagnosis of Cervical Cancer Using Hybrid Multilayered Perceptron (HMLP) Network

机译:使用杂种多层的宫颈癌诊断宫颈癌(HMLP)网络

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Cancer of the cervix is the second most common cancer among females in Malaysia after breast cancer. In most cases, cervical cancer takes many years to develop from normal to advanced stage. Therefore, the mortality related to cervical cancer can be reduced through early detection and treatment. Pap test is one of the early diagnosis that should be done to reduce the mortality rate related to cervical cancer. Neverthenles, low accuracy, sensitivity and specificity become a problem in diagnosing cervical cancer by using the Pap test. Recently, artificial intelligent based on neural network such as radial basis function, multi-layered perceptron and modular knowledge-based network have been implemented widely as cervical cancer diagnosis system. The networks is used to classify the cervical cells into normal and abnormal cells. In this paper, a hybrid multi-layered perceptron using recursive least square algorithm is introduced to diagnose the cervical cancer. The network has high ability to classify the cervical cells into normal, low-grade squamous intraepithelial lesions and high-grade squamous intraepithelial lesions. Furthermore, it has been prove to achieve better accuracy, sensitivity and specificity with smaller false negative and false positive compared to the conventional techniques. The results also proved that by using the network which has superior ability to be implemented as cervical cancer diagnosis system, the Pap test performance can be improved.
机译:子宫颈癌症是乳腺癌后马来西亚雌性的第二次常见的癌症。在大多数情况下,宫颈癌需要多年才能从正常到高级阶段发展。因此,通过早期检测和治疗可以减少与宫颈癌相关的死亡率。 PAP测试是应采取的早期诊断之一,以降低与宫颈癌相关的死亡率。通过使用PAP测试,从未完成,低精度,敏感性和特异性成为诊断宫颈癌的问题。最近,基于神经网络的人工智能如径向基函数,多层的感知和基于模块化知识网络的基于神经网络,被广泛作为宫颈癌诊断系统实现。网络用于将宫颈细胞分类为正常和异常细胞。本文介绍了使用递归最小二乘算法的杂交多层摄影师以诊断宫颈癌。该网络具有高能力将宫颈细胞分类为正常,低级鳞状上皮病变和高级鳞状上皮病变。此外,与传统技术相比,已经证明了以较小的假阴性和假阳性达到更好的准确度,敏感度和特异性。结果还证明,通过使用具有卓越的能力作为宫颈癌诊断系统的网络,可以提高PAP测试性能。

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