Literature DB >> 33833293

Predicting the clinical management of skin lesions using deep learning.

Kumar Abhishek1, Jeremy Kawahara2, Ghassan Hamarneh2.   

Abstract

Automated machine learning approaches to skin lesion diagnosis from images are approaching dermatologist-level performance. However, current machine learning approaches that suggest management decisions rely on predicting the underlying skin condition to infer a management decision without considering the variability of management decisions that may exist within a single condition. We present the first work to explore image-based prediction of clinical management decisions directly without explicitly predicting the diagnosis. In particular, we use clinical and dermoscopic images of skin lesions along with patient metadata from the Interactive Atlas of Dermoscopy dataset (1011 cases; 20 disease labels; 3 management decisions) and demonstrate that predicting management labels directly is more accurate than predicting the diagnosis and then inferring the management decision ([Formula: see text] and [Formula: see text] improvement in overall accuracy and AUROC respectively), statistically significant at [Formula: see text]. Directly predicting management decisions also considerably reduces the over-excision rate as compared to management decisions inferred from diagnosis predictions (24.56% fewer cases wrongly predicted to be excised). Furthermore, we show that training a model to also simultaneously predict the seven-point criteria and the diagnosis of skin lesions yields an even higher accuracy (improvements of [Formula: see text] and [Formula: see text] in overall accuracy and AUROC respectively) of management predictions. Finally, we demonstrate our model's generalizability by evaluating on the publicly available MClass-D dataset and show that our model agrees with the clinical management recommendations of 157 dermatologists as much as they agree amongst each other.

Entities:  

Year:  2021        PMID: 33833293     DOI: 10.1038/s41598-021-87064-7

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  21 in total

1.  The CASH (color, architecture, symmetry, and homogeneity) algorithm for dermoscopy.

Authors:  J Scott Henning; Stephen W Dusza; Steven Q Wang; Ashfaq A Marghoob; Harold S Rabinovitz; David Polsky; Alfred W Kopf
Journal:  J Am Acad Dermatol       Date:  2007-01       Impact factor: 11.527

2.  Deep learning outperformed 136 of 157 dermatologists in a head-to-head dermoscopic melanoma image classification task.

Authors:  Titus J Brinker; Achim Hekler; Alexander H Enk; Joachim Klode; Axel Hauschild; Carola Berking; Bastian Schilling; Sebastian Haferkamp; Dirk Schadendorf; Tim Holland-Letz; Jochen S Utikal; Christof von Kalle
Journal:  Eur J Cancer       Date:  2019-04-10       Impact factor: 9.162

3.  Man against machine: diagnostic performance of a deep learning convolutional neural network for dermoscopic melanoma recognition in comparison to 58 dermatologists.

Authors:  H A Haenssle; C Fink; R Schneiderbauer; F Toberer; T Buhl; A Blum; A Kalloo; A Ben Hadj Hassen; L Thomas; A Enk; L Uhlmann
Journal:  Ann Oncol       Date:  2018-08-01       Impact factor: 32.976

4.  Skin lesion computational diagnosis of dermoscopic images: Ensemble models based on input feature manipulation.

Authors:  Roberta B Oliveira; Aledir S Pereira; João Manuel R S Tavares
Journal:  Comput Methods Programs Biomed       Date:  2017-07-20       Impact factor: 5.428

5.  Direct Cup-to-Disc Ratio Estimation for Glaucoma Screening via Semi-Supervised Learning.

Authors:  Rongchang Zhao; Xuanlin Chen; Xiyao Liu; Zailiang Chen; Fan Guo; Shuo Li
Journal:  IEEE J Biomed Health Inform       Date:  2019-08-12       Impact factor: 5.772

6.  Mobile teledermatology for skin tumour screening: diagnostic accuracy of clinical and dermoscopic image tele-evaluation using cellular phones.

Authors:  S Kroemer; J Frühauf; T M Campbell; C Massone; G Schwantzer; H P Soyer; R Hofmann-Wellenhof
Journal:  Br J Dermatol       Date:  2011-05       Impact factor: 9.302

7.  Detection of Skin Cancer Using SVM, Random Forest and kNN Classifiers.

Authors:  A Murugan; S Anu H Nair; K P Sanal Kumar
Journal:  J Med Syst       Date:  2019-07-04       Impact factor: 4.460

8.  Dermatologist-level classification of skin cancer with deep neural networks.

Authors:  Andre Esteva; Brett Kuprel; Roberto A Novoa; Justin Ko; Susan M Swetter; Helen M Blau; Sebastian Thrun
Journal:  Nature       Date:  2017-01-25       Impact factor: 49.962

9.  Early detection of malignant melanoma: the role of physician examination and self-examination of the skin.

Authors:  R J Friedman; D S Rigel; A W Kopf
Journal:  CA Cancer J Clin       Date:  1985 May-Jun       Impact factor: 508.702

10.  Machine Friendly Machine Learning: Interpretation of Computed Tomography Without Image Reconstruction.

Authors:  Hyunkwang Lee; Chao Huang; Sehyo Yune; Shahein H Tajmir; Myeongchan Kim; Synho Do
Journal:  Sci Rep       Date:  2019-10-29       Impact factor: 4.379

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  1 in total

1.  Predicting Mohs surgery complexity by applying machine learning to patient demographics and tumor characteristics.

Authors:  Gon Shoham; Ariel Berl; Ofir Shir-Az; Sharon Shabo; Avshalom Shalom
Journal:  Exp Dermatol       Date:  2022-03-03       Impact factor: 4.511

  1 in total

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