Expert-Level Diagnosis of Nonpigmented Skin Cancer by Combined Convolutional Neural Networks

被引:151
|
作者
Tschandl, Philipp [1 ,2 ]
Rosendahl, Cliff [3 ,4 ]
Akay, Bengu Nisa [5 ]
Argenziano, Giuseppe [6 ]
Blum, Andreas [7 ]
Braun, Ralph P. [8 ]
Cabo, Horacio [9 ]
Gourhant, Jean-Yves [10 ]
Kreusch, Juergen [11 ]
Lallas, Aimilios [12 ]
Lapins, Jan [13 ,14 ]
Marghoob, Ashfaq [15 ]
Menzies, Scott [16 ,17 ]
Neuber, Nina Maria [2 ]
Paoli, John [18 ]
Rabinovitz, Harold S. [19 ]
Rinner, Christoph [20 ]
Scope, Alon [21 ]
Soyer, H. Peter [22 ]
Sinz, Christoph [2 ]
Thomas, Luc [23 ]
Zalaudek, Iris [24 ]
Kittler, Harald [2 ]
机构
[1] Simon Fraser Univ, Sch Comp Sci, Burnaby, BC, Canada
[2] Med Univ Vienna, Dept Dermatol, Vienna Dermatol Imaging Res Grp, Wahringer Gurte11 8-20, A-1090 Vienna, Austria
[3] Univ Queensland, Sch Med, Brisbane, Qld, Australia
[4] Univ Tehran Med Sci, Sch Med, Tehran, Iran
[5] Ankara Univ, Fac Med, Dept Dermatol, Ankara, Turkey
[6] Univ Campania, Dermatol Unit, Naples, Italy
[7] Publ Private & Teaching Practice Dermatol, Constance, Germany
[8] Univ Hosp Zurich, Dept Dermatol, Zurich, Switzerland
[9] Univ Buenos Aires, Inst Invest Med ALanari, Dept Dermatol, Buenos Aires, DF, Argentina
[10] Ctr Dermatol, Nemours, France
[11] Private Practice, Lubeck, Germany
[12] Aristotle Univ Thessaloniki, Dept Dermatol 1, Thessaloniki, Greece
[13] Karolinska Univ Hosp, Dept Dermatol, Stockholm, Sweden
[14] Karolinska Inst, Stockholm, Sweden
[15] Mem Sloan Kettering Canc Ctr, Dermatol Serv, Hauppauge, NY USA
[16] Univ Sydney, Sydney Melanoma Diagnost Ctr, Sydney, NSW, Australia
[17] Univ Sydney, Discipline Dermatol, Sydney, NSW, Australia
[18] Univ Gothenburg, Sahlgrenska Acad, Inst Clin Sci, Dept Dermatol, Gothenburg, Sweden
[19] Skin & Canc Associates, Plantation, FL USA
[20] Med Univ Vienna, Ctr Med Stat Informat & Intelligent Syst, Vienna, Austria
[21] Tel Aviv Univ, Med Screening Inst, Chaim Sheba Med Ctr, Sackler Sch Med, Tel Aviv, Israel
[22] Univ Queensland, Diamantina Inst, Dermatol Res Ctr, Brisbane, Qld, Australia
[23] Lyon 1 Univ, Ctr Hosp Lyon Sud, Lyons Canc Res Ctr, Dept Dermatol, Lyon, France
[24] Univ Trieste, Maggiore Hosp, Dermatol Clin, Trieste, Italy
关键词
MELANOMA DETECTION; ACCURACY; DERMATOSCOPY; DERMOSCOPY; PERFORMANCE; MULTICENTER; MANAGEMENT; SYSTEM;
D O I
10.1001/jamadermatol.2018.4378
中图分类号
R75 [皮肤病学与性病学];
学科分类号
100206 ;
摘要
IMPORTANCE Convolutional neural networks (CNNs) achieve expert-level accuracy in the diagnosis of pigmented melanocytic lesions. However, the most common types of skin cancer are nonpigmented and nonmelanocytic, and are more difficult to diagnose. OBJECTIVE To compare the accuracy of a CNN-based classifier with that of physicians with different levels of experience. DESIGN, SETTING, AND PARTICIPANTS A CNN-based classification model was trained on 7895 dermoscopic and 5829 close-up images of lesions excised at a primary skin cancer clinic between January 1, 2008, and July 13, 2017, for a combined evaluation of both imaging methods. The combined CNN (cCNN) was tested on a set of 2072 unknown cases and compared with results from 95 human raters who were medical personnel, including 62 board-certified dermatologists, with different experience in dermoscopy. MAIN OUTCOMES AND MEASURES The proportions of correct specific diagnoses and the accuracy to differentiate between benign and malignant lesions measured as an area under the receiver operating characteristic curve served as main outcome measures. RESULTS Among 95 human raters (51.6% female; mean age, 43.4 years; 95% CI, 41.0-45.7 years), the participants were divided into 3 groups (according to years of experience with dermoscopy): beginner raters (<3 years), intermediate raters (3-10 years), or expert raters (>10 years). The area under the receiver operating characteristic curve of the trained cCNN was higher than human ratings (0.742; 95% CI, 0.729-0.755 vs 0.695; 95% CI, 0.676-0.713; P < .001). The specificity was fixed at the mean level of human raters (51.3%), and therefore the sensitivity of the cCNN (80.5%; 95% CI, 79.0%-82.1%) was higher than that of human raters (77.6%; 95% CI, 74.7%-80.5%). The cCNN achieved a higher percentage of correct specific diagnoses compared with human raters (37.6%; 95% CI, 36.6%-38.4% vs 33.5%; 95% CI, 31.5%-35.6%; P = .001) but not compared with experts (37.3%; 95% CI, 35.7%-38.8% vs 40.0%; 95% CI, 37.0%-43.0%; P = .18). CONCLUSIONS AND RELEVANCE Neural networks are able to classify dermoscopic and close-up images of nonpigmented lesions as accurately as human experts in an experimental setting.
引用
收藏
页码:58 / 65
页数:8
相关论文
共 50 条
  • [1] Expert-level sleep scoring with deep neural networks
    Biswal, Siddharth
    Sun, Haoqi
    Goparaju, Balaji
    Westover, M. Brandon
    Sun, Jimeng
    Bianchi, Matt T.
    JOURNAL OF THE AMERICAN MEDICAL INFORMATICS ASSOCIATION, 2018, 25 (12) : 1643 - 1650
  • [2] Expert-level automated malaria diagnosis on routine blood films with deep neural networks
    Manescu, Petru
    Shaw, Michael J.
    Elmi, Muna
    Neary-Zajiczek, Lydia
    Claveau, Remy
    Pawar, Vijay
    Kokkinos, Iasonas
    Oyinloye, Gbeminiyi
    Bendkowski, Christopher
    Oladejo, Olajide A.
    Oladejo, Bolanle F.
    Clark, Tristan
    Timm, Denis
    Shawe-Taylor, John
    Srinivasan, Mandayam A.
    Lagunju, Ikeoluwa
    Sodeinde, Olugbemiro
    Brown, Biobele J.
    Fernandez-Reyes, Delmiro
    AMERICAN JOURNAL OF HEMATOLOGY, 2020, 95 (08) : 883 - 891
  • [3] Expert-Level Distinction of Systemic Sclerosis from Hand Photographs Using Deep Convolutional Neural Networks
    Norimatsu, Yuta
    Yoshizaki, Ayumi
    Kabeya, Yoshinori
    Fukasawa, Takemichi
    Omatsu, Jun
    Fukayama, Maiko
    Kuzumi, Ai
    Ebata, Satoshi
    Yoshizaki-Ogawa, Asako
    Asano, Yoshihide
    Ichimura, Haruka
    Yonezawa, Sho
    Nakano, Hiroki
    Sato, Shinichi
    JOURNAL OF INVESTIGATIVE DERMATOLOGY, 2021, 141 (10) : 2536 - +
  • [4] Glaucoma Expert-Level Detection of Angle Closure in Goniophotographs With Convolutional Neural Networks: The Chinese American Eye Study
    Chiang, Michael
    Guth, Daniel
    Pardeshi, Anmol A.
    Randhawa, Jasmeen
    Shen, Alice
    Shan, Meghan
    Dredge, Justin
    Nguyen, Annie
    Gokoffski, Kimberly
    Wong, Brandon J.
    Song, Brian
    Lin, Shan
    Varma, Rohit
    Xu, Benjamin Y.
    AMERICAN JOURNAL OF OPHTHALMOLOGY, 2021, 226 : 100 - 107
  • [5] Deep learning on digital mammography for expert-level diagnosis accuracy in breast cancer detection
    Qu, Jinrong
    Zhao, Xuran
    Chen, Peng
    Wang, Zhaoqi
    Liu, Zhenzhen
    Yang, Bailin
    Li, Hailiang
    MULTIMEDIA SYSTEMS, 2022, 28 (04) : 1263 - 1274
  • [6] An ensemble of neural networks provides expert-level prenatal detection of complex congenital heart disease
    Arnaout, Rima
    Curran, Lara
    Zhao, Yili
    Levine, Jami C.
    Chinn, Erin
    Moon-Grady, Anita J.
    NATURE MEDICINE, 2021, 27 (05) : 882 - +
  • [7] Adaptive level set segmentation combined with convolutional neural networks for pigmented skin lesions
    Huang, Lin
    Yang, Tiejun
    BASIC & CLINICAL PHARMACOLOGY & TOXICOLOGY, 2021, 128 : 10 - 11
  • [8] An ensemble of neural networks provides expert-level prenatal detection of complex congenital heart disease
    Rima Arnaout
    Lara Curran
    Yili Zhao
    Jami C. Levine
    Erin Chinn
    Anita J. Moon-Grady
    Nature Medicine, 2021, 27 : 882 - 891
  • [9] Deep learning on digital mammography for expert-level diagnosis accuracy in breast cancer detection
    Jinrong Qu
    Xuran Zhao
    Peng Chen
    Zhaoqi Wang
    Zhenzhen Liu
    Bailin Yang
    Hailiang Li
    Multimedia Systems, 2022, 28 : 1263 - 1274
  • [10] Effective Skin Cancer Diagnosis Through Federated Learning and Deep Convolutional Neural Networks
    Al-Rakhami, Mabrook S.
    Alqahtani, Salman A.
    Alawwad, Abdulaziz
    APPLIED ARTIFICIAL INTELLIGENCE, 2024, 38 (01)