A machine learning model for skin disease classification using convolution neural network

Viswanatha Reddy Allugunti
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引用次数: 80

Abstract

Melanoma is a skin disease that tends to be lethal. It occurs when melanocytes develop in an uncontrolled manner. Melanoma goes under a few different names, including malignant melanoma. The incidence of melanoma is at its highest level ever recorded in both Australia and New Zealand. It is estimated that one in every 15 white New Zealanders will indeed be diagnosed with melanoma at some point in their lives. Aggressive malignancy was the third most common kind of cancer in men and women in 2012, respectively. Melanoma can develop at any age in adults, but it is highly unusual in children and teenagers. It is hypothesized that the first step in developing melanoma is an unregulated multiplication of melanocytic stem cells that have been genetically altered. The survival rate can significantly increase if melanoma is identified in dermos copy images at an earlier stage. On the other hand, the detection of melanomas is an incredibly challenging task. Consequently, the detection and recognition of skin cancer are of tremendous assistance to the accuracy of pathologists. In this research, a deep learning technique is shown for reliably diagnosing the type of melanoma present at a preliminary phase. The proposed model makes a distinction among lesion maligna, superficial spreading, and nodular melanoma. This permits the early diagnosis of the virus and the quick isolation and therapy necessary to stop the transmission of infection further. Deep learning (DL) and the standard non-parametric machine learning method are exemplified in the deep layer topologies of the convolutional neural network (CNN), which are neural network algorithms. The effectiveness of a CNN classifier was evaluated using data retrieved from the website https://dermnetnz.org/. The outcomes of the experiments show that the proposed method is superior in terms of diagnostic accuracy compared to the methodologies that are currently considered state of the art.
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基于卷积神经网络的皮肤病分类机器学习模型
黑色素瘤是一种致命的皮肤病。当黑素细胞以不受控制的方式发育时,就会发生这种情况。黑色素瘤有几个不同的名字,包括恶性黑色素瘤。在澳大利亚和新西兰,黑色素瘤的发病率都达到了有史以来的最高水平。据估计,每15个新西兰白人中就有一个会在人生的某个阶段被诊断出患有黑色素瘤。2012年,侵袭性恶性肿瘤分别是男性和女性的第三大常见癌症。黑色素瘤可以在成人的任何年龄发生,但在儿童和青少年中非常罕见。据推测,黑色素瘤发生的第一步是基因改变的黑色素细胞干细胞的不受管制的增殖。如果在早期阶段在皮肤复制图像中发现黑色素瘤,存活率可以显着增加。另一方面,黑素瘤的检测是一项极具挑战性的任务。因此,皮肤癌的检测和识别对病理学家的准确性有很大的帮助。在这项研究中,一种深度学习技术被证明可以可靠地诊断黑色素瘤的类型。提出的模型使病变恶性,浅表扩散和结节性黑色素瘤之间的区别。这使得早期诊断病毒和迅速隔离和治疗必要的进一步阻止感染的传播。深度学习(DL)和标准的非参数机器学习方法在卷积神经网络(CNN)的深层拓扑中得到了例证,这是神经网络算法。CNN分类器的有效性使用从https://dermnetnz.org/网站检索的数据进行评估。实验结果表明,与目前被认为是最先进的方法相比,所提出的方法在诊断准确性方面更胜一筹。
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