Diagnostic Accuracy of Content Based Dermatoscopic Image Retrieval with Deep Classification Features
Philipp Tschandl, Giuseppe Argenziano, Majid Razmara, Jordan Yap

TL;DR
This study compares content-based image retrieval using deep features with neural network softmax predictions for dermatoscopic image diagnosis, finding similar accuracy and potential clinical interpretability benefits.
Contribution
It demonstrates that CBIR with deep features achieves comparable diagnostic accuracy to softmax predictions in dermatoscopic image classification.
Findings
CBIR shows similar AUC to softmax predictions across datasets.
CBIR's multiclass accuracy is comparable to softmax predictions.
CBIR may enhance clinical interpretability and diagnostic accuracy.
Abstract
Background: Automated classification of medical images through neural networks can reach high accuracy rates but lack interpretability. Objectives: To compare the diagnostic accuracy obtained by using content based image retrieval (CBIR) to retrieve visually similar dermatoscopic images with corresponding disease labels against predictions made by a neural network. Methods: A neural network was trained to predict disease classes on dermatoscopic images from three retrospectively collected image datasets containing 888, 2750 and 16691 images respectively. Diagnosis predictions were made based on the most commonly occurring diagnosis in visually similar images, or based on the top-1 class prediction of the softmax output from the network. Outcome measures were area under the ROC curve for predicting a malignant lesion (AUC), multiclass-accuracy and mean average precision (mAP),…
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Taxonomy
MethodsSoftmax
