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2.
J Imaging Inform Med ; 37(3): 1137-1150, 2024 Jun.
Artículo en Inglés | MEDLINE | ID: mdl-38332404

RESUMEN

In recent years, deep learning (DL) has been used extensively and successfully to diagnose different cancers in dermoscopic images. However, most approaches lack clinical inputs supported by dermatologists that could aid in higher accuracy and explainability. To dermatologists, the presence of telangiectasia, or narrow blood vessels that typically appear serpiginous or arborizing, is a critical indicator of basal cell carcinoma (BCC). Exploiting the feature information present in telangiectasia through a combination of DL-based techniques could create a pathway for both, improving DL results as well as aiding dermatologists in BCC diagnosis. This study demonstrates a novel "fusion" technique for BCC vs non-BCC classification using ensemble learning on a combination of (a) handcrafted features from semantically segmented telangiectasia (U-Net-based) and (b) deep learning features generated from whole lesion images (EfficientNet-B5-based). This fusion method achieves a binary classification accuracy of 97.2%, with a 1.3% improvement over the corresponding DL-only model, on a holdout test set of 395 images. An increase of 3.7% in sensitivity, 1.5% in specificity, and 1.5% in precision along with an AUC of 0.99 was also achieved. Metric improvements were demonstrated in three stages: (1) the addition of handcrafted telangiectasia features to deep learning features, (2) including areas near telangiectasia (surround areas), (3) discarding the noisy lower-importance features through feature importance. Another novel approach to feature finding with weak annotations through the examination of the surrounding areas of telangiectasia is offered in this study. The experimental results show state-of-the-art accuracy and precision in the diagnosis of BCC, compared to three benchmark techniques. Further exploration of deep learning techniques for individual dermoscopy feature detection is warranted.


Asunto(s)
Carcinoma Basocelular , Aprendizaje Profundo , Neoplasias Cutáneas , Telangiectasia , Humanos , Carcinoma Basocelular/diagnóstico por imagen , Carcinoma Basocelular/diagnóstico , Carcinoma Basocelular/patología , Neoplasias Cutáneas/diagnóstico , Neoplasias Cutáneas/diagnóstico por imagen , Neoplasias Cutáneas/patología , Telangiectasia/diagnóstico por imagen , Telangiectasia/patología , Telangiectasia/diagnóstico , Interpretación de Imagen Asistida por Computador/métodos , Dermoscopía/métodos , Sensibilidad y Especificidad
3.
J Imaging Inform Med ; 37(1): 92-106, 2024 Feb.
Artículo en Inglés | MEDLINE | ID: mdl-38343238

RESUMEN

A critical clinical indicator for basal cell carcinoma (BCC) is the presence of telangiectasia (narrow, arborizing blood vessels) within the skin lesions. Many skin cancer imaging processes today exploit deep learning (DL) models for diagnosis, segmentation of features, and feature analysis. To extend automated diagnosis, recent computational intelligence research has also explored the field of Topological Data Analysis (TDA), a branch of mathematics that uses topology to extract meaningful information from highly complex data. This study combines TDA and DL with ensemble learning to create a hybrid TDA-DL BCC diagnostic model. Persistence homology (a TDA technique) is implemented to extract topological features from automatically segmented telangiectasia as well as skin lesions, and DL features are generated by fine-tuning a pre-trained EfficientNet-B5 model. The final hybrid TDA-DL model achieves state-of-the-art accuracy of 97.4% and an AUC of 0.995 on a holdout test of 395 skin lesions for BCC diagnosis. This study demonstrates that telangiectasia features improve BCC diagnosis, and TDA techniques hold the potential to improve DL performance.

4.
J Digit Imaging ; 36(2): 526-535, 2023 04.
Artículo en Inglés | MEDLINE | ID: mdl-36385676

RESUMEN

Hair and ruler mark structures in dermoscopic images are an obstacle preventing accurate image segmentation and detection of critical network features. Recognition and removal of hairs from images can be challenging, especially for hairs that are thin, overlapping, faded, or of similar color as skin or overlaid on a textured lesion. This paper proposes a novel deep learning (DL) technique to detect hair and ruler marks in skin lesion images. Our proposed ChimeraNet is an encoder-decoder architecture that employs pretrained EfficientNet in the encoder and squeeze-and-excitation residual (SERes) structures in the decoder. We applied this approach at multiple image sizes and evaluated it using the publicly available HAM10000 (ISIC2018 Task 3) skin lesion dataset. Our test results show that the largest image size (448 × 448) gave the highest accuracy of 98.23 and Jaccard index of 0.65 on the HAM10000 (ISIC 2018 Task 3) skin lesion dataset, exhibiting better performance than for two well-known deep learning approaches, U-Net and ResUNet-a. We found the Dice loss function to give the best results for all measures. Further evaluated on 25 additional test images, the technique yields state-of-the-art accuracy compared to 8 previously reported classical techniques. We conclude that the proposed ChimeraNet architecture may enable improved detection of fine image structures. Further application of DL techniques to detect dermoscopy structures is warranted.


Asunto(s)
Melanoma , Enfermedades de la Piel , Neoplasias Cutáneas , Humanos , Neoplasias Cutáneas/patología , Redes Neurales de la Computación , Algoritmos , Dermoscopía/métodos , Cabello/diagnóstico por imagen , Cabello/patología , Procesamiento de Imagen Asistido por Computador/métodos
5.
Skin Res Technol ; 25(4): 544-552, 2019 Jul.
Artículo en Inglés | MEDLINE | ID: mdl-30868667

RESUMEN

PURPOSE: We present a classifier for automatically selecting a lesion border for dermoscopy skin lesion images, to aid in computer-aided diagnosis of melanoma. Variation in photographic technique of dermoscopy images makes segmentation of skin lesions a difficult problem. No single algorithm provides an acceptable lesion border to allow further processing of skin lesions. METHODS: We present a random forests border classifier model to select a lesion border from 12 segmentation algorithm borders, graded on a "good-enough" border basis. Morphology and color features inside and outside the automatic border are used to build the model. RESULTS: For a random forests classifier applied to an 802-lesion test set, the model predicts a satisfactory border in 96.38% of cases, in comparison to the best single border algorithm, which detects a satisfactory border in 85.91% of cases. CONCLUSION: The performance of the classifier-based automatic skin lesion finder is found to be better than any single algorithm used in this research.


Asunto(s)
Dermoscopía/métodos , Melanoma/diagnóstico por imagen , Reconocimiento de Normas Patrones Automatizadas/métodos , Neoplasias Cutáneas/diagnóstico por imagen , Algoritmos , Color , Dermoscopía/clasificación , Diagnóstico por Computador , Humanos , Aumento de la Imagen , Interpretación de Imagen Asistida por Computador/instrumentación , Melanoma/patología , Piel/patología , Neoplasias Cutáneas/clasificación , Neoplasias Cutáneas/patología
6.
IEEE J Biomed Health Inform ; 23(4): 1385-1391, 2019 07.
Artículo en Inglés | MEDLINE | ID: mdl-30624234

RESUMEN

This paper presents an approach that combines conventional image processing with deep learning by fusing the features from the individual techniques. We hypothesize that the two techniques, with different error profiles, are synergistic. The conventional image processing arm uses three handcrafted biologically inspired image processing modules and one clinical information module. The image processing modules detect lesion features comparable to clinical dermoscopy information-atypical pigment network, color distribution, and blood vessels. The clinical module includes information submitted to the pathologist-patient age, gender, lesion location, size, and patient history. The deep learning arm utilizes knowledge transfer via a ResNet-50 network that is repurposed to predict the probability of melanoma classification. The classification scores of each individual module from both processing arms are then ensembled utilizing logistic regression to predict an overall melanoma probability. Using cross-validated results of melanoma classification measured by area under the receiver operator characteristic curve (AUC), classification accuracy of 0.94 was obtained for the fusion technique. In comparison, the ResNet-50 deep learning based classifier alone yields an AUC of 0.87 and conventional image processing based classifier yields an AUC of 0.90. Further study of fusion of conventional image processing techniques and deep learning is warranted.


Asunto(s)
Dermoscopía/métodos , Interpretación de Imagen Asistida por Computador/métodos , Melanoma/diagnóstico por imagen , Algoritmos , Área Bajo la Curva , Bases de Datos Factuales , Aprendizaje Profundo , Humanos , Piel/diagnóstico por imagen
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