深度学习多模态黑色素瘤检测:算法开发和验证。

JMIR AI Pub Date : 2025-07-05 DOI:10.2196/66561
Nithika Vivek, Karthik Ramesh
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引用次数: 0

摘要

背景:黑色素瘤与脂溢性角化病在视觉上的相似性使得老年残疾患者难以知道何时就医,从而导致黑色素瘤的转移。目的:在本文中,我们提出了一种新的基于多模态深度学习的技术来区分黑色素瘤和脂溢性角化病。方法:我们的策略有三个方面:(1)利用患者图像数据使用迁移学习训练和测试三个深度学习模型(ResNet50, InceptionV3和VGG16)和一个作者设计的模型;(2)使用患者元数据训练和测试一个深度学习模型;(3)将具有最佳精度的图像模型和元数据模型的预测结合起来,使用非线性最小二乘回归为每个模型指定理想权值进行组合预测。结果:在HAM10000数据集的测试数据上,组合模型的准确率为88%(195/221分类正确)。通过可视化每个模型的输出激活图并将诊断模式与皮肤科医生的诊断模式进行比较,来评估模型的可靠性。向图像数据集添加元数据是同时降低假阴性和假阳性率的关键,从而产生更好的指标并提高整体模型准确性。结论:本实验的结果可以通过应用程序的便捷访问来消除黑色素瘤的晚期诊断。未来的实验可以利用文本数据(关于患者在一定时间内的感受的主观数据),使该模型更大程度上反映真实的医院环境。临床试验:
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Multi Modal Melanoma Detection: Algorithm Development and Validation.

Background: The visual similarity of melanoma and seborrheic keratosis has made it difficult for elderly patients with disabilities to know when to seek medical attention, contributing to the metastasis of melanoma.

Objective: In this paper, we present a novel multi-modal deep learning-based technique to distinguish between melanoma and seborrheic keratosis.

Methods: Our strategy is three-fold: (1) utilize patient image data to train and test three deep learning models using transfer learning (ResNet50, InceptionV3, and VGG16) and one author designed model, (2) use patient metadata to train and test a deep learning model, and (3) combine the predictions of the image model with the best accuracy and the metadata model, using nonlinear least squares regression to specify ideal weights to each model for a combined prediction.

Results: The accuracy of the combined model was 88% (195/221 classified correctly) on test data from the HAM10000 dataset. Model reliability was assessed by visualizing the output activation map of each model and comparing the diagnosis patterns to that of dermatologists. The addition of metadata to the image dataset was key to reducing the false negative and false positive rate simultaneously, thereby producing better metrics and improving overall model accuracy.

Conclusions: Results from this experiment could be used to eliminate late diagnosis of melanoma via easy access to an app. Future experiments can utilize text data (subjective data pertaining to how the patient felt over a certain period of time) to allow this model to reflect the real hospital setting to a greater extent.

Clinicaltrial:

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