Cargando…

Improving Automatic Melanoma Diagnosis Using Deep Learning-Based Segmentation of Irregular Networks

SIMPLE SUMMARY: Supervised deep learning techniques can now automatically process whole dermoscopic images and obtain a diagnostic accuracy for melanoma that exceeds that of specialists. These automatic diagnosis systems are now appearing in clinics. However, the computational techniques used cannot...

Descripción completa

Detalles Bibliográficos
Autores principales: Nambisan, Anand K., Maurya, Akanksha, Lama, Norsang, Phan, Thanh, Patel, Gehana, Miller, Keith, Lama, Binita, Hagerty, Jason, Stanley, Ronald, Stoecker, William V.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9953766/
https://www.ncbi.nlm.nih.gov/pubmed/36831599
http://dx.doi.org/10.3390/cancers15041259
_version_ 1784893959382761472
author Nambisan, Anand K.
Maurya, Akanksha
Lama, Norsang
Phan, Thanh
Patel, Gehana
Miller, Keith
Lama, Binita
Hagerty, Jason
Stanley, Ronald
Stoecker, William V.
author_facet Nambisan, Anand K.
Maurya, Akanksha
Lama, Norsang
Phan, Thanh
Patel, Gehana
Miller, Keith
Lama, Binita
Hagerty, Jason
Stanley, Ronald
Stoecker, William V.
author_sort Nambisan, Anand K.
collection PubMed
description SIMPLE SUMMARY: Supervised deep learning techniques can now automatically process whole dermoscopic images and obtain a diagnostic accuracy for melanoma that exceeds that of specialists. These automatic diagnosis systems are now appearing in clinics. However, the computational techniques used cannot be easily interpreted by the experts using the systems, and they still fail to detect a minority of melanomas. We describe an approach that detects critical irregularities in pigment patterns, a clinical feature, and uses this knowledge to improve deep learning diagnostic accuracy. In this research, we trained a deep learning network to identify visible patterns associated with melanoma. We combine these patterns with a supervised whole-image deep learning method to improve diagnostic accuracy and provide a publicly available dataset with the clinical structures annotated. ABSTRACT: Deep learning has achieved significant success in malignant melanoma diagnosis. These diagnostic models are undergoing a transition into clinical use. However, with melanoma diagnostic accuracy in the range of ninety percent, a significant minority of melanomas are missed by deep learning. Many of the melanomas missed have irregular pigment networks visible using dermoscopy. This research presents an annotated irregular network database and develops a classification pipeline that fuses deep learning image-level results with conventional hand-crafted features from irregular pigment networks. We identified and annotated 487 unique dermoscopic melanoma lesions from images in the ISIC 2019 dermoscopic dataset to create a ground-truth irregular pigment network dataset. We trained multiple transfer learned segmentation models to detect irregular networks in this training set. A separate, mutually exclusive subset of the International Skin Imaging Collaboration (ISIC) 2019 dataset with 500 melanomas and 500 benign lesions was used for training and testing deep learning models for the binary classification of melanoma versus benign. The best segmentation model, U-Net++, generated irregular network masks on the 1000-image dataset. Other classical color, texture, and shape features were calculated for the irregular network areas. We achieved an increase in the recall of melanoma versus benign of 11% and in accuracy of 2% over DL-only models using conventional classifiers in a sequential pipeline based on the cascade generalization framework, with the highest increase in recall accompanying the use of the random forest algorithm. The proposed approach facilitates leveraging the strengths of both deep learning and conventional image processing techniques to improve the accuracy of melanoma diagnosis. Further research combining deep learning with conventional image processing on automatically detected dermoscopic features is warranted.
format Online
Article
Text
id pubmed-9953766
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-99537662023-02-25 Improving Automatic Melanoma Diagnosis Using Deep Learning-Based Segmentation of Irregular Networks Nambisan, Anand K. Maurya, Akanksha Lama, Norsang Phan, Thanh Patel, Gehana Miller, Keith Lama, Binita Hagerty, Jason Stanley, Ronald Stoecker, William V. Cancers (Basel) Article SIMPLE SUMMARY: Supervised deep learning techniques can now automatically process whole dermoscopic images and obtain a diagnostic accuracy for melanoma that exceeds that of specialists. These automatic diagnosis systems are now appearing in clinics. However, the computational techniques used cannot be easily interpreted by the experts using the systems, and they still fail to detect a minority of melanomas. We describe an approach that detects critical irregularities in pigment patterns, a clinical feature, and uses this knowledge to improve deep learning diagnostic accuracy. In this research, we trained a deep learning network to identify visible patterns associated with melanoma. We combine these patterns with a supervised whole-image deep learning method to improve diagnostic accuracy and provide a publicly available dataset with the clinical structures annotated. ABSTRACT: Deep learning has achieved significant success in malignant melanoma diagnosis. These diagnostic models are undergoing a transition into clinical use. However, with melanoma diagnostic accuracy in the range of ninety percent, a significant minority of melanomas are missed by deep learning. Many of the melanomas missed have irregular pigment networks visible using dermoscopy. This research presents an annotated irregular network database and develops a classification pipeline that fuses deep learning image-level results with conventional hand-crafted features from irregular pigment networks. We identified and annotated 487 unique dermoscopic melanoma lesions from images in the ISIC 2019 dermoscopic dataset to create a ground-truth irregular pigment network dataset. We trained multiple transfer learned segmentation models to detect irregular networks in this training set. A separate, mutually exclusive subset of the International Skin Imaging Collaboration (ISIC) 2019 dataset with 500 melanomas and 500 benign lesions was used for training and testing deep learning models for the binary classification of melanoma versus benign. The best segmentation model, U-Net++, generated irregular network masks on the 1000-image dataset. Other classical color, texture, and shape features were calculated for the irregular network areas. We achieved an increase in the recall of melanoma versus benign of 11% and in accuracy of 2% over DL-only models using conventional classifiers in a sequential pipeline based on the cascade generalization framework, with the highest increase in recall accompanying the use of the random forest algorithm. The proposed approach facilitates leveraging the strengths of both deep learning and conventional image processing techniques to improve the accuracy of melanoma diagnosis. Further research combining deep learning with conventional image processing on automatically detected dermoscopic features is warranted. MDPI 2023-02-16 /pmc/articles/PMC9953766/ /pubmed/36831599 http://dx.doi.org/10.3390/cancers15041259 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Nambisan, Anand K.
Maurya, Akanksha
Lama, Norsang
Phan, Thanh
Patel, Gehana
Miller, Keith
Lama, Binita
Hagerty, Jason
Stanley, Ronald
Stoecker, William V.
Improving Automatic Melanoma Diagnosis Using Deep Learning-Based Segmentation of Irregular Networks
title Improving Automatic Melanoma Diagnosis Using Deep Learning-Based Segmentation of Irregular Networks
title_full Improving Automatic Melanoma Diagnosis Using Deep Learning-Based Segmentation of Irregular Networks
title_fullStr Improving Automatic Melanoma Diagnosis Using Deep Learning-Based Segmentation of Irregular Networks
title_full_unstemmed Improving Automatic Melanoma Diagnosis Using Deep Learning-Based Segmentation of Irregular Networks
title_short Improving Automatic Melanoma Diagnosis Using Deep Learning-Based Segmentation of Irregular Networks
title_sort improving automatic melanoma diagnosis using deep learning-based segmentation of irregular networks
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9953766/
https://www.ncbi.nlm.nih.gov/pubmed/36831599
http://dx.doi.org/10.3390/cancers15041259
work_keys_str_mv AT nambisananandk improvingautomaticmelanomadiagnosisusingdeeplearningbasedsegmentationofirregularnetworks
AT mauryaakanksha improvingautomaticmelanomadiagnosisusingdeeplearningbasedsegmentationofirregularnetworks
AT lamanorsang improvingautomaticmelanomadiagnosisusingdeeplearningbasedsegmentationofirregularnetworks
AT phanthanh improvingautomaticmelanomadiagnosisusingdeeplearningbasedsegmentationofirregularnetworks
AT patelgehana improvingautomaticmelanomadiagnosisusingdeeplearningbasedsegmentationofirregularnetworks
AT millerkeith improvingautomaticmelanomadiagnosisusingdeeplearningbasedsegmentationofirregularnetworks
AT lamabinita improvingautomaticmelanomadiagnosisusingdeeplearningbasedsegmentationofirregularnetworks
AT hagertyjason improvingautomaticmelanomadiagnosisusingdeeplearningbasedsegmentationofirregularnetworks
AT stanleyronald improvingautomaticmelanomadiagnosisusingdeeplearningbasedsegmentationofirregularnetworks
AT stoeckerwilliamv improvingautomaticmelanomadiagnosisusingdeeplearningbasedsegmentationofirregularnetworks