The Role of Artificial Intelligence With Deep Convolutional Neural Network in Screening Melanoma: A Systematic Review and Meta-Analyses of Quasi-Experimental Diagnostic Studies.

IF 1 4区 医学 Q3 SURGERY
Stella Maureen Miracle, Louis Rianto, Kelvin Kelvin, Kevin Tandarto, Felix Setiadi, Angela Angela, Thiara Maharani Brunner, Hari Darmawan, Henry Tanojo, Rosalyn Kupwiwat, Inneke Jane Hidajat, Rungsima Wanitphakdeedecha, Kyu-Ho Yi
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引用次数: 0

Abstract

Introduction: Detecting melanoma as one of the most common skin cancer with using artificial intelligence (AI), such as deep convolutional neural network (DCNN) have the potency to increase the accuracy of the diagnosis. The aim of this study is to analyze the sensitivity, specificity, precision, and F1-score of DCNN in screening melanoma.

Methodology: The authors followed the PRISMA 2020 guidelines to retrieve literature in the following databases: PubMed, EBSCOhost, Emerald, Wiley, and ScienceDirect. The study's inclusion criteria were human quasi-experimental investigated DCNN in screening melanoma. The analysis was conducted using RevMan 5.4 and Quality Assessment of Diagnostic Accuracy Studies 2 (QUADAS-2) to ensure the quality of the studies.

Results: Fifty-six of 2386 articles published in 2003 to 2023 were included and 24 studies were statistically analyzed. Various type of DCNN was used [artificial neural network (n=4); pigment network (n=4); atypical pigment network (n=1); ResNet (=8); AlexNet (n=3); visual geometry group (n=7); inception (n=4); custom DCNN (n=4)]. The mean and median of total sample size in meta-analysis with melanoma subjects were (18,791; 2,157) with (573; 261), respectively. Overall, QUADAS-2 showed low risk of bias. Diagnostic performance was observed with pooled sensitivity (0.881), pooled specificity (0.897), and pooled AUC (0.894). The precision and F1-score were ranging from 58% to 98.83% and 0.45 to 0.98. The forest plot and summary receiver operating characteristics curve (SROC) of each multiple in multiple analysis showed satisfactory results.

Conclusions: DCNN showed significant result to screen melanoma in patients. It has the potential to help clinician in giving early screening.

人工智能与深度卷积神经网络在黑色素瘤筛查中的作用:准实验诊断研究的系统回顾和荟萃分析。
黑色素瘤是最常见的皮肤癌之一,利用人工智能(AI)检测黑色素瘤,如深度卷积神经网络(DCNN),有可能提高诊断的准确性。本研究的目的是分析DCNN筛查黑色素瘤的敏感性、特异性、精确性和f1评分。方法:作者按照PRISMA 2020指南在以下数据库中检索文献:PubMed、EBSCOhost、Emerald、Wiley和ScienceDirect。该研究的纳入标准是人类准实验研究的DCNN筛查黑色素瘤。分析使用RevMan 5.4和诊断准确性研究质量评估2 (QUADAS-2)进行,以确保研究质量。结果:2003 ~ 2023年发表的2386篇文献中纳入56篇,统计分析24篇。采用不同类型的DCNN[人工神经网络](n=4);颜料网(n=4);非典型色素网络(n=1);ResNet (= 8);AlexNet (n = 3);视觉几何组(n=7);《盗梦空间》(n = 4);custom DCNN (n=4)]。荟萃分析中黑色素瘤受试者的总样本量的平均值和中位数为(18,791;2157人,573人;分别为261)。总体而言,QUADAS-2显示低偏倚风险。合并敏感性(0.881)、合并特异性(0.897)和合并AUC(0.894)观察诊断效能。精密度为58% ~ 98.83%,f1评分为0.45 ~ 0.98。在多元分析中,各多元的森林图和综合受试者工作特征曲线(SROC)均显示出满意的结果。结论:DCNN对黑色素瘤患者的筛查效果显著。它有可能帮助临床医生进行早期筛查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.70
自引率
11.10%
发文量
968
审稿时长
1.5 months
期刊介绍: ​The Journal of Craniofacial Surgery serves as a forum of communication for all those involved in craniofacial surgery, maxillofacial surgery and pediatric plastic surgery. Coverage ranges from practical aspects of craniofacial surgery to the basic science that underlies surgical practice. The journal publishes original articles, scientific reviews, editorials and invited commentary, abstracts and selected articles from international journals, and occasional international bibliographies in craniofacial surgery.
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