基于面部图像数据库诊断内分泌和代谢综合征的人工智能面部识别系统

IF 4.3 Q1 ENDOCRINOLOGY & METABOLISM
Danning Wu , Jiaqi Qiang , Weixin Hong , Hanze Du , Hongbo Yang , Huijuan Zhu , Hui Pan , Zhen Shen , Shi Chen
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引用次数: 0

摘要

目的建立一个面部图像数据库,并探讨基于人工智能的面部识别(AI-FR)系统对多种内分泌和代谢综合征的诊断效果和影响因素。方法从公开文献和数据库中纳入患有多种内分泌和代谢综合征的个体和健康对照组。在该面部图像数据库中,收集了每位参与者的面部图像和临床数据,并计算了疾病面部识别强度(dFRI),以量化每种综合征的面部复杂性。使用支持向量机(SVM)、主成分分析 k-nearest neighbor(PCA-KNN)和自适应提升(AdaBoost)三种算法对每种疾病的 AI-FR 诊断模型进行了训练。对诊断性能进行了评估。在三个模型中,最佳疗效是最佳指标。结果 10 种内分泌和代谢综合征的 462 个病例和 2310 个对照组被纳入面部图像数据库。AI-FR诊断模型的诊断准确率分别为:SVM为0.827-0.920,PCA-KNN为0.766-0.890,AdaBoost为0.818-0.935。较高的 dFRI 与较高的最佳曲线下面积 (AUC) 相关(P = 0.035)。结论 针对 10 种内分泌和代谢综合征建立了一个多种族、多地区和多疾病的面部数据库。dFRI 被证明与诊断性能相关,表明固有的面部特征可能有助于提高 AI-FR 模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence facial recognition system for diagnosis of endocrine and metabolic syndromes based on a facial image database

Aim

To build a facial image database and to explore the diagnostic efficacy and influencing factors of the artificial intelligence-based facial recognition (AI-FR) system for multiple endocrine and metabolic syndromes.

Methods

Individuals with multiple endocrine and metabolic syndromes and healthy controls were included from public literature and databases. In this facial image database, facial images and clinical data were collected for each participant and dFRI (disease facial recognition intensity) was calculated to quantify facial complexity of each syndrome. AI-FR diagnosis models were trained for each disease using three algorithms: support vector machine (SVM), principal component analysis k-nearest neighbor (PCA-KNN), and adaptive boosting (AdaBoost). Diagnostic performance was evaluated. Optimal efficacy was achieved as the best index among the three models. Effect factors of AI-FR diagnosis were explored with regression analysis.

Results

462 cases of 10 endocrine and metabolic syndromes and 2310 controls were included into the facial image database. The AI-FR diagnostic models showed diagnostic accuracies of 0.827–0.920 with SVM, 0.766–0.890 with PCA-KNN, and 0.818–0.935 with AdaBoost. Higher dFRI was associated with higher optimal area under the curve (AUC) (P = 0.035). No significant correlation was observed between the sample size of the training set and diagnostic performance.

Conclusions

A multi-ethnic, multi-regional, and multi-disease facial database for 10 endocrine and metabolic syndromes was built. AI-FR models displayed ideal diagnostic performance. dFRI proved associated with the diagnostic performance, suggesting inherent facial features might contribute to the performance of AI-FR models.

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来源期刊
CiteScore
22.90
自引率
2.00%
发文量
248
审稿时长
51 days
期刊介绍: Diabetes and Metabolic Syndrome: Clinical Research and Reviews is the official journal of DiabetesIndia. It aims to provide a global platform for healthcare professionals, diabetes educators, and other stakeholders to submit their research on diabetes care. Types of Publications: Diabetes and Metabolic Syndrome: Clinical Research and Reviews publishes peer-reviewed original articles, reviews, short communications, case reports, letters to the Editor, and expert comments. Reviews and mini-reviews are particularly welcomed for areas within endocrinology undergoing rapid changes.
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