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通过图像分割减少混杂因素对皮肤癌分类的影响:技术模型研究。

Reducing the Impact of Confounding Factors on Skin Cancer Classification via Image Segmentation: Technical Model Study.

机构信息

Digital Biomarkers for Oncology Group, National Center for Tumor Diseases (NCT), German Cancer Research Center (DKFZ), Heidelberg, Germany.

Department of Dermatology and Allergy, University Hospital, LMU Munich, Munich, Germany.

出版信息

J Med Internet Res. 2021 Mar 25;23(3):e21695. doi: 10.2196/21695.

Abstract

BACKGROUND

Studies have shown that artificial intelligence achieves similar or better performance than dermatologists in specific dermoscopic image classification tasks. However, artificial intelligence is susceptible to the influence of confounding factors within images (eg, skin markings), which can lead to false diagnoses of cancerous skin lesions. Image segmentation can remove lesion-adjacent confounding factors but greatly change the image representation.

OBJECTIVE

The aim of this study was to compare the performance of 2 image classification workflows where images were either segmented or left unprocessed before the subsequent training and evaluation of a binary skin lesion classifier.

METHODS

Separate binary skin lesion classifiers (nevus vs melanoma) were trained and evaluated on segmented and unsegmented dermoscopic images. For a more informative result, separate classifiers were trained on 2 distinct training data sets (human against machine [HAM] and International Skin Imaging Collaboration [ISIC]). Each training run was repeated 5 times. The mean performance of the 5 runs was evaluated on a multi-source test set (n=688) consisting of a holdout and an external component.

RESULTS

Our findings showed that when trained on HAM, the segmented classifiers showed a higher overall balanced accuracy (75.6% [SD 1.1%]) than the unsegmented classifiers (66.7% [SD 3.2%]), which was significant in 4 out of 5 runs (P<.001). The overall balanced accuracy was numerically higher for the unsegmented ISIC classifiers (78.3% [SD 1.8%]) than for the segmented ISIC classifiers (77.4% [SD 1.5%]), which was significantly different in 1 out of 5 runs (P=.004).

CONCLUSIONS

Image segmentation does not result in overall performance decrease but it causes the beneficial removal of lesion-adjacent confounding factors. Thus, it is a viable option to address the negative impact that confounding factors have on deep learning models in dermatology. However, the segmentation step might introduce new pitfalls, which require further investigations.

摘要

背景

研究表明,人工智能在特定的皮肤镜图像分类任务中可达到与皮肤科医生相当或更好的性能。然而,人工智能易受图像内混杂因素(例如皮肤标记)的影响,这可能导致对癌性皮肤病变的误诊。图像分割可以去除病变邻近的混杂因素,但会极大地改变图像表示。

目的

本研究旨在比较 2 种图像分类工作流程的性能,一种是在对二进制皮肤病变分类器进行后续训练和评估之前对图像进行分割,另一种是不对图像进行处理。

方法

分别在分割和未分割的皮肤镜图像上训练和评估独立的二进制皮肤病变分类器(痣与黑色素瘤)。为了获得更有信息的结果,分别在 2 个不同的训练数据集(人机对抗[HAM]和国际皮肤成像协作[ISIC])上训练分类器。每次训练运行重复 5 次。在一个由保留和外部组件组成的多源测试集(n=688)上评估 5 次运行的平均性能。

结果

我们的研究结果表明,当在 HAM 上进行训练时,分割分类器的整体平衡准确率(75.6%[1.1%])高于未分割分类器(66.7%[3.2%]),在 5 次运行中的 4 次中差异显著(P<.001)。未分割的 ISIC 分类器(78.3%[1.8%])的整体平衡准确率略高于分割的 ISIC 分类器(77.4%[1.5%]),在 5 次运行中的 1 次差异显著(P=.004)。

结论

图像分割不会导致整体性能下降,但它可以有益地去除病变邻近的混杂因素。因此,它是解决混杂因素对皮肤科深度学习模型的负面影响的可行选择。然而,分割步骤可能会引入新的陷阱,需要进一步研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0835/8074854/8a45da743fde/jmir_v23i3e21695_fig1.jpg

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