Saliency-Enhanced Content-Based Image Retrieval for Diagnosis Support in Dermatology Consultation: Reader Study.

Q3 Medicine JMIR dermatology Pub Date : 2023-08-24 DOI:10.2196/42129
Mathias Gassner, Javier Barranco Garcia, Stephanie Tanadini-Lang, Fabio Bertoldo, Fabienne Fröhlich, Matthias Guckenberger, Silvia Haueis, Christin Pelzer, Mauricio Reyes, Patrick Schmithausen, Dario Simic, Ramon Staeger, Fabio Verardi, Nicolaus Andratschke, Andreas Adelmann, Ralph P Braun
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引用次数: 1

Abstract

Background: Previous research studies have demonstrated that medical content image retrieval can play an important role by assisting dermatologists in skin lesion diagnosis. However, current state-of-the-art approaches have not been adopted in routine consultation, partly due to the lack of interpretability limiting trust by clinical users.

Objective: This study developed a new image retrieval architecture for polarized or dermoscopic imaging guided by interpretable saliency maps. This approach provides better feature extraction, leading to better quantitative retrieval performance as well as providing interpretability for an eventual real-world implementation.

Methods: Content-based image retrieval (CBIR) algorithms rely on the comparison of image features embedded by convolutional neural network (CNN) against a labeled data set. Saliency maps are computer vision-interpretable methods that highlight the most relevant regions for the prediction made by a neural network. By introducing a fine-tuning stage that includes saliency maps to guide feature extraction, the accuracy of image retrieval is optimized. We refer to this approach as saliency-enhanced CBIR (SE-CBIR). A reader study was designed at the University Hospital Zurich Dermatology Clinic to evaluate SE-CBIR's retrieval accuracy as well as the impact of the participant's confidence on the diagnosis.

Results: SE-CBIR improved the retrieval accuracy by 7% (77% vs 84%) when doing single-lesion retrieval against traditional CBIR. The reader study showed an overall increase in classification accuracy of 22% (62% vs 84%) when the participant is provided with SE-CBIR retrieved images. In addition, the overall confidence in the lesion's diagnosis increased by 24%. Finally, the use of SE-CBIR as a support tool helped the participants reduce the number of nonmelanoma lesions previously diagnosed as melanoma (overdiagnosis) by 53%.

Conclusions: SE-CBIR presents better retrieval accuracy compared to traditional CBIR CNN-based approaches. Furthermore, we have shown how these support tools can help dermatologists and residents improve diagnosis accuracy and confidence. Additionally, by introducing interpretable methods, we should expect increased acceptance and use of these tools in routine consultation.

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显着增强的基于内容的图像检索在皮肤科会诊诊断支持:读者研究。
背景:以往的研究表明,医学内容图像检索可以帮助皮肤科医生在皮肤病变诊断中发挥重要作用。然而,目前最先进的方法尚未在常规咨询中采用,部分原因是缺乏可解释性,限制了临床用户的信任。目的:建立一种基于可解释显著性图的偏振或皮肤镜图像检索体系。这种方法提供了更好的特征提取,带来了更好的定量检索性能,并为最终的现实世界实现提供了可解释性。方法:基于内容的图像检索(CBIR)算法依赖于卷积神经网络(CNN)嵌入的图像特征与标记数据集的比较。显著性图是一种计算机视觉可解释的方法,它突出显示与神经网络预测最相关的区域。通过引入包括显著性图在内的微调阶段来指导特征提取,优化了图像检索的准确性。我们将这种方法称为显著性增强CBIR (SE-CBIR)。在苏黎世大学医院皮肤科诊所设计了一项读者研究,以评估SE-CBIR的检索准确性以及参与者信心对诊断的影响。结果:与传统的CBIR相比,在单病灶检索时,SE-CBIR的检索准确率提高了7%(77%对84%)。读者研究显示,当参与者获得SE-CBIR检索图像时,分类准确率总体提高了22%(62%对84%)。此外,对病变诊断的总体信心增加了24%。最后,使用SE-CBIR作为辅助工具,帮助参与者将先前诊断为黑色素瘤(过度诊断)的非黑色素瘤病变数量减少了53%。结论:与传统的基于cnn的CBIR方法相比,SE-CBIR具有更好的检索精度。此外,我们还展示了这些支持工具如何帮助皮肤科医生和住院医生提高诊断准确性和信心。此外,通过引入可解释的方法,我们应该期望在日常咨询中增加对这些工具的接受和使用。
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CiteScore
1.20
自引率
0.00%
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0
审稿时长
18 weeks
期刊最新文献
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