A Clinical Perspective on the Automated Analysis of Reflectance Confocal Microscopy in Dermatology

被引:9
作者
Mehrabi, Joseph N. [1 ]
Baugh, Erica G. [1 ]
Fast, Alexander [2 ]
Lentsch, Griffin [2 ]
Balu, Mihaela [2 ]
Lee, Bonnie A. [1 ]
Kelly, Kristen M. [1 ,2 ]
机构
[1] Univ Calif Irvine, Dept Dermatol, 118 Med Surg 1, Irvine, CA 92697 USA
[2] Univ Calif Irvine, Beckman Laser Inst, Irvine, CA 92612 USA
关键词
reflectance confocal microscopy; artificial intelligence; machine learning; photo-aging; skin stratification; pigmented lesions; melanocytic lesions; DERMAL-EPIDERMAL JUNCTION; LASER-SCANNING MICROSCOPY; BASAL-CELL CARCINOMA; IN-VIVO; IMAGE STACKS; CLASSIFICATION; DELINEATION; DIAGNOSIS; SPECIFICITY; SENSITIVITY;
D O I
10.1002/lsm.23376
中图分类号
R75 [皮肤病学与性病学];
学科分类号
100206 ;
摘要
Background and Objectives Non-invasive optical imaging has the potential to provide a diagnosis without the need for biopsy. One such technology is reflectance confocal microscopy (RCM), which uses low power, near-infrared laser light to enable real-time in vivo visualization of superficial human skin from the epidermis down to the papillary dermis. Although RCM has great potential as a diagnostic tool, there is a need for the development of reliable image analysis programs, as acquired grayscale images can be difficult and time-consuming to visually assess. The purpose of this review is to provide a clinical perspective on the current state of artificial intelligence (AI) for the analysis and diagnostic utility of RCM imaging. Study Design/Materials and Methods A systematic PubMed search was conducted with additional relevant literature obtained from reference lists. Results Algorithms used for skin stratification, classification of pigmented lesions, and the quantification of photoaging were reviewed. Image segmentation, statistical methods, and machine learning techniques are among the most common methods used to analyze RCM image stacks. The poor visual contrast within RCM images and difficulty navigating image stacks were mediated by machine learning algorithms, which allowed the identification of specific skin layers. Conclusions AI analysis of RCM images has the potential to increase the clinical utility of this emerging technology. A number of different techniques have been utilized but further refinements are necessary to allow consistent accurate assessments for diagnosis. The automated detection of skin cancers requires more development, but future applications are truly boundless, and it is compelling to envision the role that AI will have in the practice of dermatology. Lasers Surg. Med. (c) 2020 Wiley Periodicals LLC
引用
收藏
页码:1011 / 1019
页数:9
相关论文
共 50 条
  • [31] Rapid diagnosis of tinea incognito using handheld reflectance confocal microscopy: a paradigm shift in dermatology?
    Navarrete-Dechent, Cristian
    Bajaj, Shirin
    Marghoob, Ashfaq A.
    Marchetti, Michael A.
    MYCOSES, 2015, 58 (06) : 383 - 386
  • [32] Reflectance Confocal Microscopy Criteria for Squamous Cell Carcinomas and Actinic Keratoses
    Rishpon, Ayelet
    Kim, Nancy
    Scope, Alon
    Porges, Leeor
    Oliviero, Margaret C.
    Braun, Ralph P.
    Marghoob, Ashfaq A.
    Fox, Christi Alessi
    Rabinovitz, Harold S.
    ARCHIVES OF DERMATOLOGY, 2009, 145 (07) : 766 - 772
  • [33] Utilizing Machine Learning for Image Quality Assessment for Reflectance Confocal Microscopy
    Kose, Kivanc
    Bozkurt, Alican
    Alessi-Fox, Christi
    Brooks, Dana H.
    Dy, Jennifer G.
    Rajadhyaksha, Milind
    Gill, Melissa
    JOURNAL OF INVESTIGATIVE DERMATOLOGY, 2020, 140 (06) : 1214 - 1222
  • [34] A meta-analysis of reflectance confocal microscopy for the diagnosis of malignant skin tumours
    Xiong, Y. D.
    Ma, S.
    Li, X.
    Zhong, X.
    Duan, C.
    Chen, Q.
    JOURNAL OF THE EUROPEAN ACADEMY OF DERMATOLOGY AND VENEREOLOGY, 2016, 30 (08) : 1295 - 1302
  • [35] Reflectance confocal microscopy Principles, basic terminology, clinical indications, limitations, and practical considerations
    Shahriari, Neda
    Grant-Kels, Jane M.
    Rabinovitz, Harold
    Oliviero, Margaret
    Scope, Alon
    JOURNAL OF THE AMERICAN ACADEMY OF DERMATOLOGY, 2021, 84 (01) : 1 - 14
  • [36] Automatic Localization of Skin Layers in Reflectance Confocal Microscopy
    Somoza, Eduardo
    Cula, Gabriela Oana
    Correa, Catherine
    Hirsch, Julie B.
    IMAGE ANALYSIS AND RECOGNITION, ICIAR 2014, PT II, 2014, 8815 : 141 - 150
  • [37] In vivo confocal reflectance microscopy in melanoma
    Carrera, Cristina
    Puig, Susana
    Malvehy, Josep
    DERMATOLOGIC THERAPY, 2012, 25 (05) : 410 - 422
  • [38] Reflectance confocal microscopy for mucosal diseases
    Cinotti, E.
    Labeille, B.
    Cambazard, F.
    Thuret, G.
    Gain, P.
    Perrot, J. L.
    GIORNALE ITALIANO DI DERMATOLOGIA E VENEREOLOGIA, 2015, 150 (05): : 585 - 593
  • [39] Reflectance confocal microscopy for pigmentary disorders
    Kang, Hee Young
    Bahadoran, Philippe
    Ortonne, Jean-Paul
    EXPERIMENTAL DERMATOLOGY, 2010, 19 (03) : 233 - 239
  • [40] Development of a two-step method for the diagnosis of melanoma by reflectance confocal microscopy
    Segura, Sonia
    Puig, Susana
    Carrera, Cristina
    Palou, Josep
    Malvehy, Josep
    JOURNAL OF THE AMERICAN ACADEMY OF DERMATOLOGY, 2009, 61 (02) : 216 - 229