DC-SMIL:通过球面分离自动检测非塑性痣的多实例学习解决方案

E. Vocaturo, E. Zumpano, G. Giallombardo, G. Miglionico
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引用次数: 16

摘要

在皮肤癌中,黑色素瘤是最具侵袭性和最致命的一种。尽管有这些可怕的前提,但由于早期诊断而进行的切除治疗几乎总是决定性的,保证了患者的生存。黑色素瘤与其他皮肤病变(如发育不良痣)的极端相似性阻碍了黑色素瘤的早期检测。目前的研究旨在定义软件解决方案,以支持对黑色素瘤病变的计算机诊断。到目前为止,这些建议,无论是在算法和框架方面,都集中在黑色素瘤和良性病变的二分区分上。然而,目前关于发育不良痣综合征(DNS)的争论,使得与病变性质有关的问题,集中在全身出现大量痣的受试者身上。事实上,有DNS的人更有可能被黑色素瘤攻击。关于区分发育不良痣与普通痣的分类任务是完全未探索的。在本文中,我们考虑了应用多实例学习(MIL)方法区分黑色素瘤和发育不良痣的困难任务,并概述了与普通痣和发育不良痣分类相关的更复杂的挑战。特别地,我们介绍了使用球面分离表面的MIL方法的应用。由于结果看起来很有希望,我们得出结论,MIL技术可能是用于检测皮肤病变的更复杂工具的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DC-SMIL: a multiple instance learning solution via spherical separation for automated detection of displastyc nevi
Among skin cancers, melanoma is the most aggressive and most lethal form. Despite these terrible premises, an excision treatment carried out thanks to an early diagnosis is almost always decisive, guaranteeing the patient's survival. The early detection of melanoma is hampered by the extreme similarity of melanoma with other skin lesions such as dysplastic nevi. The current research is aimed at defining software solutions that support the computerized diagnosis of lesions for the detection of melanoma. To date, the proposals, both in terms of algorithms and frameworks, have focused on the dichotomous distinction of melanoma from benign lesions. However, the current debate on Dysplastic Nevi Syndrome (DNS), makes issues relating to the nature of the lesions, central to subjects who present a large number of moles throughout the body. In fact, individuals with DNS have a greater chance of being attacked by melanoma. The classification task relating to the distinction of dysplastic nevi from common ones is totally unexplored. In this document, we consider the difficult task of applying multiple-instance learning (MIL) approaches to discriminate melanoma from dysplastic nevi and outline an even more complex challenge related to the classification of dysplastic nevi from common ones. In particular, we introduce the application of a MIL approach that uses spherical separation surfaces. Since the results seem promising, we conclude that a MIL technique could be the basis of more sophisticated tools useful for detecting skin lesions.
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