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Performance of Artificial Intelligence Imaging Models in Detecting Dermatological Manifestations in Higher Fitzpatrick Skin Color Classifications

机译:人工智能成像模型检测较高的皮肤病皮肤种子分类的性能智能成像模型

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Background The performance of deep-learning image recognition models is below par when applied to images with Fitzpatrick classification skin types 4 and 5. Objective The objective of this research was to assess whether image recognition models perform differently when differentiating between dermatological diseases in individuals with darker skin color (Fitzpatrick skin types 4 and 5) than when differentiating between the same dermatological diseases in Caucasians (Fitzpatrick skin types 1, 2, and 3) when both models are trained on the same number of images. Methods Two image recognition models were trained, validated, and tested. The goal of each model was to differentiate between melanoma and basal cell carcinoma. Open-source images of melanoma and basal cell carcinoma were acquired from the Hellenic Dermatological Atlas, the Dermatology Atlas, the Interactive Dermatology Atlas, and DermNet NZ. Results The image recognition models trained and validated on images with light skin color had higher sensitivity, specificity, positive predictive value, negative predictive value, and F1 score than the image recognition models trained and validated on images of skin of color for differentiation between melanoma and basal cell carcinoma. Conclusions A higher number of images of dermatological diseases in individuals with darker skin color than images of dermatological diseases in individuals with light skin color would need to be gathered for artificial intelligence models to perform equally well.
机译:背景技术在使用FitzPatrick分类皮肤类型4和5的图像应用于图像时,深度学习图像识别模型的性能低于PAR。目的是评估图像识别模型是否在以更深的较暗中的个人皮肤病肤色(FITZPATRICK皮肤类型4和5),当两种型号训练在相同数量的图像上时,在高加索人(FITZPATRICK皮肤类型1,2和3)之间相同的皮肤病(FITZPATRICK皮肤类型1,2和3)之间。方法培训,验证了两种图像识别模型,验证和测试。每个模型的目标是区分黑素瘤和基底细胞癌。从Hellenic皮肤病,皮肤病学阿特拉斯,互动性皮肤病学阿特拉斯和Dermnet NZ获得了黑色素瘤和基础细胞癌的开源图像。结果培训和验证的图像识别模型在具有浅肤色的图像上具有更高的灵敏度,特异性,阳性预测值,负预测值和F1分数,而不是培训的图像识别模型和在黑色素瘤之间分化的颜色的图像上验证和验证基底细胞癌。结论需要为人工智能模型的人工智能模型相比表现出同样良好的人工智能模型,所以需要聚集肤色较深的皮肤色的皮肤色疾病的皮肤病的皮肤疾病数量较多。

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