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RESEARCH PRODUCT
An attention-based weakly supervised framework for spitzoid melanocytic lesion diagnosis in whole slide images
Adrián ColomerAndrés Mosquera-zamudioAnaïs MoscardóValery NaranjoLaëtitia LaunetCarlos MonteagudoRocío Del Amorsubject
Skin NeoplasmsComputer scienceBiopsyMedicine (miscellaneous)CADInductive transfer learningConvolutional neural networkInductive transferArtificial IntelligenceTEORIA DE LA SEÑAL Y COMUNICACIONESBiopsyAttention convolutional neural networkmedicineHumansDiagnosis Computer-AssistedMelanomaMicroscopymedicine.diagnostic_testbusiness.industryMultiple instance learningMelanomaDeep learningHistopathological whole-slide imagesPattern recognitionGold standard (test)medicine.diseaseSpitzoid lesionsArtificial intelligenceSkin cancerbusinessdescription
[EN] Melanoma is an aggressive neoplasm responsible for the majority of deaths from skin cancer. Specifically, spitzoid melanocytic tumors are one of the most challenging melanocytic lesions due to their ambiguous morphological features. The gold standard for its diagnosis and prognosis is the analysis of skin biopsies. In this process, dermatopathologists visualize skin histology slides under a microscope, in a highly time-consuming and subjective task. In the last years, computer-aided diagnosis (CAD) systems have emerged as a promising tool that could support pathologists in daily clinical practice. Nevertheless, no automatic CAD systems have yet been proposed for the analysis of spitzoid lesions. Regarding common melanoma, no system allows both the selection of the tumor region and the prediction of the benign or malignant form in the diagnosis. Motivated by this, we propose a novel end-to-end weakly supervised deep learning model, based on inductive transfer learning with an improved convolutional neural network (CNN) to refine the embedding features of the latent space. The framework is composed of a source model in charge of finding the tumor patch-level patterns, and a target model focuses on the specific diagnosis of a biopsy. The latter retrains the backbone of the source model through a multiple instance learning workflow to obtain the biopsy-level scoring. To evaluate the performance of the proposed methods, we performed extensive experiments on a private skin database with spitzoid lesions. Test results achieved an accuracy of 0.9231 and 0.80 for the source and the target models, respectively. In addition, the heat map findings are directly in line with the clinicians' medical decision and even highlight, in some cases, patterns of interest that were overlooked by the pathologist.
year | journal | country | edition | language |
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2021-11-01 | Artificial Intelligence in Medicine |