Literature DB >> 30521691

Computer-assisted diagnosis techniques (dermoscopy and spectroscopy-based) for diagnosing skin cancer in adults.

Lavinia Ferrante di Ruffano1, Yemisi Takwoingi, Jacqueline Dinnes, Naomi Chuchu, Susan E Bayliss, Clare Davenport, Rubeta N Matin, Kathie Godfrey, Colette O'Sullivan, Abha Gulati, Sue Ann Chan, Alana Durack, Susan O'Connell, Matthew D Gardiner, Jeffrey Bamber, Jonathan J Deeks, Hywel C Williams.   

Abstract

BACKGROUND: Early accurate detection of all skin cancer types is essential to guide appropriate management and to improve morbidity and survival. Melanoma and cutaneous squamous cell carcinoma (cSCC) are high-risk skin cancers which have the potential to metastasise and ultimately lead to death, whereas basal cell carcinoma (BCC) is usually localised with potential to infiltrate and damage surrounding tissue. Anxiety around missing early curable cases needs to be balanced against inappropriate referral and unnecessary excision of benign lesions. Computer-assisted diagnosis (CAD) systems use artificial intelligence to analyse lesion data and arrive at a diagnosis of skin cancer. When used in unreferred settings ('primary care'), CAD may assist general practitioners (GPs) or other clinicians to more appropriately triage high-risk lesions to secondary care. Used alongside clinical and dermoscopic suspicion of malignancy, CAD may reduce unnecessary excisions without missing melanoma cases.
OBJECTIVES: To determine the accuracy of CAD systems for diagnosing cutaneous invasive melanoma and atypical intraepidermal melanocytic variants, BCC or cSCC in adults, and to compare its accuracy with that of dermoscopy. SEARCH
METHODS: We undertook a comprehensive search of the following databases from inception up to August 2016: Cochrane Central Register of Controlled Trials (CENTRAL); MEDLINE; Embase; CINAHL; CPCI; Zetoc; Science Citation Index; US National Institutes of Health Ongoing Trials Register; NIHR Clinical Research Network Portfolio Database; and the World Health Organization International Clinical Trials Registry Platform. We studied reference lists and published systematic review articles. SELECTION CRITERIA: Studies of any design that evaluated CAD alone, or in comparison with dermoscopy, in adults with lesions suspicious for melanoma or BCC or cSCC, and compared with a reference standard of either histological confirmation or clinical follow-up. DATA COLLECTION AND ANALYSIS: Two review authors independently extracted all data using a standardised data extraction and quality assessment form (based on QUADAS-2). We contacted authors of included studies where information related to the target condition or diagnostic threshold were missing. We estimated summary sensitivities and specificities separately by type of CAD system, using the bivariate hierarchical model. We compared CAD with dermoscopy using (a) all available CAD data (indirect comparisons), and (b) studies providing paired data for both tests (direct comparisons). We tested the contribution of human decision-making to the accuracy of CAD diagnoses in a sensitivity analysis by removing studies that gave CAD results to clinicians to guide diagnostic decision-making. MAIN
RESULTS: We included 42 studies, 24 evaluating digital dermoscopy-based CAD systems (Derm-CAD) in 23 study cohorts with 9602 lesions (1220 melanomas, at least 83 BCCs, 9 cSCCs), providing 32 datasets for Derm-CAD and seven for dermoscopy. Eighteen studies evaluated spectroscopy-based CAD (Spectro-CAD) in 16 study cohorts with 6336 lesions (934 melanomas, 163 BCC, 49 cSCCs), providing 32 datasets for Spectro-CAD and six for dermoscopy. These consisted of 15 studies using multispectral imaging (MSI), two studies using electrical impedance spectroscopy (EIS) and one study using diffuse-reflectance spectroscopy. Studies were incompletely reported and at unclear to high risk of bias across all domains. Included studies inadequately address the review question, due to an abundance of low-quality studies, poor reporting, and recruitment of highly selected groups of participants.Across all CAD systems, we found considerable variation in the hardware and software technologies used, the types of classification algorithm employed, methods used to train the algorithms, and which lesion morphological features were extracted and analysed across all CAD systems, and even between studies evaluating CAD systems. Meta-analysis found CAD systems had high sensitivity for correct identification of cutaneous invasive melanoma and atypical intraepidermal melanocytic variants in highly selected populations, but with low and very variable specificity, particularly for Spectro-CAD systems. Pooled data from 22 studies estimated the sensitivity of Derm-CAD for the detection of melanoma as 90.1% (95% confidence interval (CI) 84.0% to 94.0%) and specificity as 74.3% (95% CI 63.6% to 82.7%). Pooled data from eight studies estimated the sensitivity of multispectral imaging CAD (MSI-CAD) as 92.9% (95% CI 83.7% to 97.1%) and specificity as 43.6% (95% CI 24.8% to 64.5%). When applied to a hypothetical population of 1000 lesions at the mean observed melanoma prevalence of 20%, Derm-CAD would miss 20 melanomas and would lead to 206 false-positive results for melanoma. MSI-CAD would miss 14 melanomas and would lead to 451 false diagnoses for melanoma. Preliminary findings suggest CAD systems are at least as sensitive as assessment of dermoscopic images for the diagnosis of invasive melanoma and atypical intraepidermal melanocytic variants. We are unable to make summary statements about the use of CAD in unreferred populations, or its accuracy in detecting keratinocyte cancers, or its use in any setting as a diagnostic aid, because of the paucity of studies. AUTHORS'
CONCLUSIONS: In highly selected patient populations all CAD types demonstrate high sensitivity, and could prove useful as a back-up for specialist diagnosis to assist in minimising the risk of missing melanomas. However, the evidence base is currently too poor to understand whether CAD system outputs translate to different clinical decision-making in practice. Insufficient data are available on the use of CAD in community settings, or for the detection of keratinocyte cancers. The evidence base for individual systems is too limited to draw conclusions on which might be preferred for practice. Prospective comparative studies are required that evaluate the use of already evaluated CAD systems as diagnostic aids, by comparison to face-to-face dermoscopy, and in participant populations that are representative of those in which the test would be used in practice.

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Mesh:

Year:  2018        PMID: 30521691      PMCID: PMC6517147          DOI: 10.1002/14651858.CD013186

Source DB:  PubMed          Journal:  Cochrane Database Syst Rev        ISSN: 1361-6137


  295 in total

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2.  Oral hedgehog-pathway inhibitors for basal-cell carcinoma.

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3.  The performance of tests of publication bias and other sample size effects in systematic reviews of diagnostic test accuracy was assessed.

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4.  Combination of features from skin pattern and ABCD analysis for lesion classification.

Authors:  Zhishun She; Y Liu; A Damatoa
Journal:  Skin Res Technol       Date:  2007-02       Impact factor: 2.365

5.  Evaluation of the MoleMate training program for assessment of suspicious pigmented lesions in primary care.

Authors:  Annabel Wood; Helen Morris; Jon Emery; Per N Hall; Symon Cotton; A Toby Prevost; Fiona M Walter
Journal:  Inform Prim Care       Date:  2008

6.  Surgery Versus 5% Imiquimod for Nodular and Superficial Basal Cell Carcinoma: 5-Year Results of the SINS Randomized Controlled Trial.

Authors:  Hywel C Williams; Fiona Bath-Hextall; Mara Ozolins; Sarah J Armstrong; Graham B Colver; William Perkins; Paul S J Miller
Journal:  J Invest Dermatol       Date:  2016-12-05       Impact factor: 8.551

7.  Improving early recognition of malignant melanomas by digital image analysis in dermatoscopy.

Authors:  A Horsch; W Stolz; A Neiss; W Abmayr; R Pompl; A Bernklau; W Bunk; D R Dersch; A Glässl; R Schiffner; G Morfill
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8.  Fast density-based lesion detection in dermoscopy images.

Authors:  Mutlu Mete; Sinan Kockara; Kemal Aydin
Journal:  Comput Med Imaging Graph       Date:  2010-09-17       Impact factor: 4.790

9.  Melanoma detection algorithm based on feature fusion.

Authors:  Catarina Barata; M Emre Celebi; Jorge S Marques
Journal:  Conf Proc IEEE Eng Med Biol Soc       Date:  2015-08

10.  Effect of adding a diagnostic aid to best practice to manage suspicious pigmented lesions in primary care: randomised controlled trial.

Authors:  Fiona M Walter; Helen C Morris; Elka Humphrys; Per N Hall; A Toby Prevost; Nigel Burrows; Lucy Bradshaw; Edward C F Wilson; Paul Norris; Joe Walls; Margaret Johnson; Ann Louise Kinmonth; Jon D Emery
Journal:  BMJ       Date:  2012-07-04
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  31 in total

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Review 2.  [Unintended consequences and side effects of digital health technology: a public health perspective].

Authors:  Benjamin Schüz; Monika Urban
Journal:  Bundesgesundheitsblatt Gesundheitsforschung Gesundheitsschutz       Date:  2020-02       Impact factor: 1.513

3.  Validation of a Novel Cutaneous Neoplasm Diagnostic Self-Efficacy Instrument (CNDSEI) for Evaluating User-Perceived Confidence With Dermoscopy.

Authors:  Kelly C Nelson; Ashley E Brown; Amanda Herrmann; Chloe Dorsey; Julie M Simon; Janice M Wilson; Stephanie A Savory; Lauren E Haydu
Journal:  Dermatol Pract Concept       Date:  2020-10-26

4.  EyeHealer: A large-scale anterior eye segment dataset with eye structure and lesion annotations.

Authors:  Wenjia Cai; Jie Xu; Ke Wang; Xiaohong Liu; Wenqin Xu; Huimin Cai; Yuanxu Gao; Yuandong Su; Meixia Zhang; Jie Zhu; Charlotte L Zhang; Edward E Zhang; Fangfei Wang; Yun Yin; Iat Fan Lai; Guangyu Wang; Kang Zhang; Yingfeng Zheng
Journal:  Precis Clin Med       Date:  2021-04-27

5.  Visual inspection and dermoscopy, alone or in combination, for diagnosing keratinocyte skin cancers in adults.

Authors:  Jacqueline Dinnes; Jonathan J Deeks; Naomi Chuchu; Rubeta N Matin; Kai Yuen Wong; Roger Benjamin Aldridge; Alana Durack; Abha Gulati; Sue Ann Chan; Louise Johnston; Susan E Bayliss; Jo Leonardi-Bee; Yemisi Takwoingi; Clare Davenport; Colette O'Sullivan; Hamid Tehrani; Hywel C Williams
Journal:  Cochrane Database Syst Rev       Date:  2018-12-04

6.  Reflectance confocal microscopy for diagnosing cutaneous melanoma in adults.

Authors:  Jacqueline Dinnes; Jonathan J Deeks; Daniel Saleh; Naomi Chuchu; Susan E Bayliss; Lopa Patel; Clare Davenport; Yemisi Takwoingi; Kathie Godfrey; Rubeta N Matin; Rakesh Patalay; Hywel C Williams
Journal:  Cochrane Database Syst Rev       Date:  2018-12-04

7.  High-frequency ultrasound for diagnosing skin cancer in adults.

Authors:  Jacqueline Dinnes; Jeffrey Bamber; Naomi Chuchu; Susan E Bayliss; Yemisi Takwoingi; Clare Davenport; Kathie Godfrey; Colette O'Sullivan; Rubeta N Matin; Jonathan J Deeks; Hywel C Williams
Journal:  Cochrane Database Syst Rev       Date:  2018-12-04

8.  Dermoscopy, with and without visual inspection, for diagnosing melanoma in adults.

Authors:  Jacqueline Dinnes; Jonathan J Deeks; Naomi Chuchu; Lavinia Ferrante di Ruffano; Rubeta N Matin; David R Thomson; Kai Yuen Wong; Roger Benjamin Aldridge; Rachel Abbott; Monica Fawzy; Susan E Bayliss; Matthew J Grainge; Yemisi Takwoingi; Clare Davenport; Kathie Godfrey; Fiona M Walter; Hywel C Williams
Journal:  Cochrane Database Syst Rev       Date:  2018-12-04

9.  Reflectance confocal microscopy for diagnosing keratinocyte skin cancers in adults.

Authors:  Jacqueline Dinnes; Jonathan J Deeks; Naomi Chuchu; Daniel Saleh; Susan E Bayliss; Yemisi Takwoingi; Clare Davenport; Lopa Patel; Rubeta N Matin; Colette O'Sullivan; Rakesh Patalay; Hywel C Williams
Journal:  Cochrane Database Syst Rev       Date:  2018-12-04

10.  Evaluation Framework for Successful Artificial Intelligence-Enabled Clinical Decision Support Systems: Mixed Methods Study.

Authors:  Mengting Ji; Georgi Z Genchev; Hengye Huang; Ting Xu; Hui Lu; Guangjun Yu
Journal:  J Med Internet Res       Date:  2021-06-02       Impact factor: 5.428

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