AI Article Synopsis

  • The study introduces a student-teacher framework that trains lightweight deep learning models using unlabeled images to quickly detect important optical coherence tomography B-scans.
  • A total of 27 lightweight models were trained on about 70,000 expert-labeled B-scans, achieving validation accuracy between 89.6% and 95.1%, with the best models being significantly faster than a pre-trained ResNet50 teacher network.
  • By incorporating around 500,000 unlabeled B-scans in the training process, the models improved performance, with the best achieving similar sensitivity and specificity to the ResNet50, showcasing the potential of using readily available unlabeled data.

Article Abstract

This work explores a student-teacher framework that leverages unlabeled images to train lightweight deep learning models with fewer parameters to perform fast automated detection of optical coherence tomography B-scans of interest. Twenty-seven lightweight models (LWMs) from four families of models were trained on expert-labeled B-scans (∼70 K) as either "abnormal" or "normal", which established a baseline performance for the models. Then the LWMs were trained from random initialization using a student-teacher framework to incorporate a large number of unlabeled B-scans (∼500 K). A pre-trained ResNet50 model served as the teacher network. The ResNet50 teacher model achieved 96.0% validation accuracy and the validation accuracy achieved by the LWMs ranged from 89.6% to 95.1%. The best performing LWMs were 2.53 to 4.13 times faster than ResNet50 (0.109s to 0.178s vs. 0.452s). All LWMs benefitted from increasing the training set by including unlabeled B-scans in the student-teacher framework, with several models achieving validation accuracy of 96.0% or higher. The three best-performing models achieved comparable sensitivity and specificity in two hold-out test sets to the teacher network. We demonstrated the effectiveness of a student-teacher framework for training fast LWMs for automated B-scan of interest detection leveraging unlabeled, routinely-available data.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8515993PMC
http://dx.doi.org/10.1364/BOE.433432DOI Listing

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