基于超声的卷积深度神经网络的隐私保护与黑色素瘤诊断

Yi Yang
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引用次数: 0

摘要

黑色素瘤是一种癌症,是皮肤癌死亡的主要原因。阳性患者预后的一个主要预测因素是在疾病扩散超出初始病变之前在早期癌症阶段诊断疾病。然而,许多患者被诊断得很晚,因为他们没有钱去看医生,或者不好意思去检查。这些病人的死亡率明显更高。作为补救措施,已经提出了机器学习模型来实现使用图像的简单和自动诊断。然而,由于训练数据的可用性有限,尚不可能开发用于临床环境的模型。可获得的培训数据往往是私人的,因此在个别机构中是孤立的。因此,包含不同祖先、肤色和年龄的患者的大型数据集是不可用的。在这项研究中,我们表明图像的超声化导致更大比例的患者同意在公共数据库中共享他们的数据,并且从超声化图像训练的模型与在原始皮肤病变图像上训练的模型具有相似的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy-preserving With Sonification For Training of Convolutional Deep Neural Networks for Melanoma Diagnosis
Melanoma is a form of cancer that is a primary cause of skin cancer deaths. A major predictive factor for positive patient outcomes is diagnosis of disease in earlier cancer stages before the disease has spread beyond the initial lesion. However, many patients are diagnosed late because they cannot afford to meet a doctor or are embarrassed to be examined. These patients suffer from a significantly greater rate of mortality. As a remedy, machine learning models have been proposed to enable easy and automated diagnosis using images. However, the development of models for use in a clinical setting is not yet possible due to the limited availability of training data. Training data that is available is often private and thus isolated within individual institutions. Therefore, a large data set containing patients of different ancestries, skin colors, and ages is not available. In this study, we show that the Sonification of images results in a greater proportion of patients' consent to share their data in a public database, and that models trained from Sonified images have similar performance to those trained on raw skin lesion images.
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