Literature DB >> 31838127

Utilizing Machine Learning for Image Quality Assessment for Reflectance Confocal Microscopy.

Kivanc Kose1, Alican Bozkurt2, Christi Alessi-Fox3, Dana H Brooks2, Jennifer G Dy2, Milind Rajadhyaksha4, Melissa Gill5.   

Abstract

In vivo reflectance confocal microscopy (RCM) enables clinicians to examine lesions' morphological and cytological information in epidermal and dermal layers while reducing the need for biopsies. As RCM is being adopted more widely, the workflow is expanding from real-time diagnosis at the bedside to include a capture, store, and forward model with image interpretation and diagnosis occurring offsite, similar to radiology. As the patient may no longer be present at the time of image interpretation, quality assurance is key during image acquisition. Herein, we introduce a quality assurance process by means of automatically quantifying diagnostically uninformative areas within the lesional area by using RCM and coregistered dermoscopy images together. We trained and validated a pixel-level segmentation model on 117 RCM mosaics collected by international collaborators. The model delineates diagnostically uninformative areas with 82% sensitivity and 93% specificity. We further tested the model on a separate set of 372 coregistered RCM-dermoscopic image pairs and illustrate how the results of the RCM-only model can be improved via a multimodal (RCM + dermoscopy) approach, which can help quantify the uninformative regions within the lesional area. Our data suggest that machine learning-based automatic quantification offers a feasible objective quality control measure for RCM imaging.
Copyright © 2019 The Authors. Published by Elsevier Inc. All rights reserved.

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Year:  2019        PMID: 31838127     DOI: 10.1016/j.jid.2019.10.018

Source DB:  PubMed          Journal:  J Invest Dermatol        ISSN: 0022-202X            Impact factor:   8.551


  10 in total

1.  Classification of Basal Cell Carcinoma in Ex Vivo Confocal Microscopy Images from Freshly Excised Tissues Using a Deep Learning Algorithm.

Authors:  Mercedes Sendín-Martín; Manuel Lara-Caro; Ucalene Harris; Matthew Moronta; Anthony Rossi; Erica Lee; Chih-Shan Jason Chen; Kishwer Nehal; Julián Conejo-Mir Sánchez; José-Juan Pereyra-Rodríguez; Manu Jain
Journal:  J Invest Dermatol       Date:  2021-10-23       Impact factor: 7.590

2.  Exploring reflectance confocal microscopy as a non-invasive diagnostic tool for genital lichen sclerosus.

Authors:  Despoina Kantere; Noora Neittaanmäki; Kristina Maltese; Ann-Marie Wennberg Larkö; Petra Tunbäck
Journal:  Exp Ther Med       Date:  2022-04-26       Impact factor: 2.751

3.  In vivo microscopy as an adjunctive tool to guide detection, diagnosis, and treatment.

Authors:  Kevin W Bishop; Kristen C Maitland; Milind Rajadhyaksha; Jonathan T C Liu
Journal:  J Biomed Opt       Date:  2022-04       Impact factor: 3.758

4.  Segmentation of cellular patterns in confocal images of melanocytic lesions in vivo via a multiscale encoder-decoder network (MED-Net).

Authors:  Kivanc Kose; Alican Bozkurt; Christi Alessi-Fox; Melissa Gill; Caterina Longo; Giovanni Pellacani; Jennifer G Dy; Dana H Brooks; Milind Rajadhyaksha
Journal:  Med Image Anal       Date:  2020-10-07       Impact factor: 8.545

5.  Automated Quantitative Analysis of Wound Histology Using Deep-Learning Neural Networks.

Authors:  Jake D Jones; Kyle P Quinn
Journal:  J Invest Dermatol       Date:  2020-10-26       Impact factor: 8.551

Review 6.  Deep Learning in Biomedical Optics.

Authors:  Lei Tian; Brady Hunt; Muyinatu A Lediju Bell; Ji Yi; Jason T Smith; Marien Ochoa; Xavier Intes; Nicholas J Durr
Journal:  Lasers Surg Med       Date:  2021-05-20

7.  Automated Extraction of Skin Wound Healing Biomarkers From In Vivo Label-Free Multiphoton Microscopy Using Convolutional Neural Networks.

Authors:  Jake D Jones; Marcos R Rodriguez; Kyle P Quinn
Journal:  Lasers Surg Med       Date:  2021-01-13

8.  Semantic segmentation of reflectance confocal microscopy mosaics of pigmented lesions using weak labels.

Authors:  Marissa D'Alonzo; Alican Bozkurt; Christi Alessi-Fox; Melissa Gill; Dana H Brooks; Milind Rajadhyaksha; Kivanc Kose; Jennifer G Dy
Journal:  Sci Rep       Date:  2021-02-11       Impact factor: 4.379

9.  Deep Learning for Basal Cell Carcinoma Detection for Reflectance Confocal Microscopy.

Authors:  Gabriele Campanella; Cristian Navarrete-Dechent; Konstantinos Liopyris; Jilliana Monnier; Saud Aleissa; Brahmteg Minhas; Alon Scope; Caterina Longo; Pascale Guitera; Giovanni Pellacani; Kivanc Kose; Allan C Halpern; Thomas J Fuchs; Manu Jain
Journal:  J Invest Dermatol       Date:  2021-07-13       Impact factor: 7.590

Review 10.  Artificial Intelligence-Based Approaches to Reflectance Confocal Microscopy Image Analysis in Dermatology.

Authors:  Ana Maria Malciu; Mihai Lupu; Vlad Mihai Voiculescu
Journal:  J Clin Med       Date:  2022-01-14       Impact factor: 4.241

  10 in total

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