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    Algorithm based smartphone apps to assess risk of skin cancer in adults: systematic review of diagnostic accuracy studies.

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    Author
    Freeman, Karoline
    Dinnes, Jacqueline
    Chuchu, Naomi
    Takwoingi, Yemisi
    Bayliss, Sue E
    Matin, Rubeta N
    Jain, Abhilash
    Walter, Fiona M
    Williams, Hywel C
    Deeks, Jonathan J
    Publication date
    2020-02-10
    Subject
    Public health. Health statistics. Occupational health. Health education
    Plastic surgery
    
    Metadata
    Show full item record
    Abstract
    Objective: To examine the validity and findings of studies that examine the accuracy of algorithm based smartphone applications ("apps") to assess risk of skin cancer in suspicious skin lesions. Design: Systematic review of diagnostic accuracy studies. Data sources: Cochrane Central Register of Controlled Trials, MEDLINE, Embase, CINAHL, CPCI, Zetoc, Science Citation Index, and online trial registers (from database inception to 10 April 2019). Eligibility criteria for selecting studies: Studies of any design that evaluated algorithm based smartphone apps to assess images of skin lesions suspicious for skin cancer. Reference standards included histological diagnosis or follow-up, and expert recommendation for further investigation or intervention. Two authors independently extracted data and assessed validity using QUADAS-2 (Quality Assessment of Diagnostic Accuracy Studies 2 tool). Estimates of sensitivity and specificity were reported for each app. Results: Nine studies that evaluated six different identifiable smartphone apps were included. Six verified results by using histology or follow-up (n=725 lesions), and three verified results by using expert recommendations (n=407 lesions). Studies were small and of poor methodological quality, with selective recruitment, high rates of unevaluable images, and differential verification. Lesion selection and image acquisition were performed by clinicians rather than smartphone users. Two CE (Conformit Europenne) marked apps are available for download. SkinScan was evaluated in a single study (n=15, five melanomas) with 0% sensitivity and 100% specificity for the detection of melanoma. SkinVision was evaluated in two studies (n=252, 61 malignant or premalignant lesions) and achieved a sensitivity of 80% (95% confidence interval 63% to 92%) and a specificity of 78% (67% to 87%) for the detection of malignant or premalignant lesions. Accuracy of the SkinVision app verified against expert recommendations was poor (three studies). Conclusions: Current algorithm based smartphone apps cannot be relied on to detect all cases of melanoma or other skin cancers. Test performance is likely to be poorer than reported here when used in clinically relevant populations and by the intended users of the apps. The current regulatory process for awarding the CE marking for algorithm based apps does not provide adequate protection to the public. Systematic review registration: PROSPERO CRD42016033595.
    Citation
    Freeman K, Dinnes J, Chuchu N, Takwoingi Y, Bayliss SE, Matin RN, Jain A, Walter FM, Williams HC, Deeks JJ. Algorithm based smartphone apps to assess risk of skin cancer in adults: systematic review of diagnostic accuracy studies. BMJ. 2020 Feb 10;368:m127. doi: 10.1136/bmj.m127. Erratum in: BMJ. 2020 Feb 25;368:m645. doi: 10.1136/bmj.m645
    Type
    Corrigendum
    Handle
    http://hdl.handle.net/20.500.14200/7685
    Additional Links
    http://www.bmj.com/thebmj
    DOI
    10.1136/bmj.m127
    PMID
    32041693
    Journal
    BMJ (Clinical Research Ed.)
    Publisher
    British Medical Association
    ae974a485f413a2113503eed53cd6c53
    10.1136/bmj.m127
    Scopus Count
    Collections
    Dermatology

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