Non-melanoma skin cancer diagnosis: a comparison between dermoscopic and smartphone images by unified visual and sonification deep learning algorithms

被引:17
|
作者
Dascalu, A. [1 ]
Walker, B. N. [2 ,3 ]
Oron, Y. [1 ]
David, E. O. [4 ]
机构
[1] Tel Aviv Univ, Sackler Sch Med, Dept Physiol & Pharmacol, 6 Matmon Cohen St, IL-6209406 Tel Aviv, Israel
[2] Georgia Inst Technol, Sch Psychol, Sonificat Lab, Atlanta, GA 30332 USA
[3] Georgia Inst Technol, Sch Interact Comp, Atlanta, GA 30332 USA
[4] Bar Ilan Univ, Dept Comp Sci, Ramat Gan, Israel
关键词
Preventive medicine; Deep learning; Sonification; Non-melanoma skin cancer; Dermoscopy; Telemedicine; POPULATION; MANAGEMENT;
D O I
10.1007/s00432-021-03809-x
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Purpose Non-melanoma skin cancer (NMSC) is the most frequent keratinocyte-origin skin tumor. It is confirmed that dermoscopy of NMSC confers a diagnostic advantage as compared to visual face-to-face assessment. COVID-19 restrictions diagnostics by telemedicine photos, which are analogous to visual inspection, displaced part of in-person visits. This study evaluated by a dual convolutional neural network (CNN) performance metrics in dermoscopic (DI) versus smartphone-captured images (SI) and tested if artificial intelligence narrows the proclaimed gap in diagnostic accuracy. Methods A CNN that receives a raw image and predicts malignancy, overlaid by a second independent CNN which processes a sonification (image-to-sound mapping) of the original image, were combined into a unified malignancy classifier. All images were histopathology-verified in a comparison between NMSC and benign skin lesions excised as suspected NMSCs. Study criteria outcomes were sensitivity and specificity for the unified output. Results Images acquired by DI (n = 132 NMSC, n = 33 benign) were compared to SI (n = 170 NMSC, n = 28 benign). DI and SI analysis metrics resulted in an area under the curve (AUC) of the receiver operator characteristic curve of 0.911 and 0.821, respectively. Accuracy was increased by DI (0.88; CI 81.9-92.4) as compared to SI (0.75; CI 68.1-80.6, p < 0.005). Sensitivity of DI was higher than SI (95.3%, CI 90.4-98.3 vs 75.3%, CI 68.1-81.6, p < 0.001), but not specificity (p = NS). Conclusion Telemedicine use of smartphone images might result in a substantial decrease in diagnostic performance as compared to dermoscopy, which needs to be considered by both healthcare providers and patients.
引用
收藏
页码:2497 / 2505
页数:9
相关论文
共 50 条
  • [1] Non-melanoma skin cancer diagnosis: a comparison between dermoscopic and smartphone images by unified visual and sonification deep learning algorithms
    A. Dascalu
    B. N. Walker
    Y. Oron
    E. O. David
    Journal of Cancer Research and Clinical Oncology, 2022, 148 : 2497 - 2505
  • [2] Machine Learning and Deep Learning Algorithms for Skin Cancer Classification from Dermoscopic Images
    Bechelli, Solene
    Delhommelle, Jerome
    BIOENGINEERING-BASEL, 2022, 9 (03):
  • [3] Comparison of quality of life between melanoma and non-melanoma skin cancer patients
    Sampogna, Francesca
    Paradisi, Andrea
    Iemboli, Maria Luisa
    Ricci, Francesco
    Sonego, Giulio
    Abeni, Damiano
    EUROPEAN JOURNAL OF DERMATOLOGY, 2019, 29 (02) : 185 - 191
  • [4] Comparison of quality of life between melanoma and non-melanoma skin cancer patients
    Francesca Sampogna
    Andrea Paradisi
    Maria Luisa Iemboli
    Francesco Ricci
    Giulio Sonego
    Damiano Abeni
    European Journal of Dermatology, 2019, 29 : 185 - 191
  • [5] Current state of machine learning for non-melanoma skin cancer
    Ajay Nair Sharma
    Samantha Shwe
    Natasha Atanaskova Mesinkovska
    Archives of Dermatological Research, 2022, 314 : 325 - 327
  • [6] Current state of machine learning for non-melanoma skin cancer
    Sharma, Ajay Nair
    Shwe, Samantha
    Mesinkovska, Natasha Atanaskova
    ARCHIVES OF DERMATOLOGICAL RESEARCH, 2022, 314 (04) : 325 - 327
  • [7] Multi-site cross-organ calibrated deep learning (MuSClD): Automated diagnosis of non-melanoma skin cancer
    Zhou, Yufei
    Koyuncu, Can
    Lu, Cheng
    Grobholz, Rainer
    Katz, Ian
    Madabhushi, Anant
    Janowczyk, Andrew
    MEDICAL IMAGE ANALYSIS, 2023, 84
  • [8] Comparison of different optical coherence tomography devices for diagnosis of non-melanoma skin cancer
    Schuh, S.
    Kaestle, R.
    Sattler, E.
    Welzel, J.
    SKIN RESEARCH AND TECHNOLOGY, 2016, 22 (04) : 395 - 405
  • [9] Preoperative AI-Driven Fluorescence Diagnosis of Non-Melanoma Skin Cancer
    Andreeva, Victoriya
    Aksamentova, Evgeniia
    Muhachev, Andrey
    Solovey, Alexey
    Litvinov, Igor
    Gusarov, Alexey
    Shevtsova, Natalia N.
    Kushkin, Dmitry
    Litvinova, Karina
    DIAGNOSTICS, 2022, 12 (01)
  • [10] Hybrid Deep Learning Framework for Melanoma Diagnosis Using Dermoscopic Medical Images
    Mateen, Muhammad
    Hayat, Shaukat
    Arshad, Fizzah
    Gu, Yeong-Hyeon
    Al-antari, Mugahed A.
    DIAGNOSTICS, 2024, 14 (19)