基于人工智能的诊断和表型--综合颅畸形的基因型相关性

IF 2.1 2区 医学 Q2 DENTISTRY, ORAL SURGERY & MEDICINE Journal of Cranio-Maxillofacial Surgery Pub Date : 2024-10-01 DOI:10.1016/j.jcms.2024.02.010
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引用次数: 0

摘要

阿博特(Apert,AS)、克鲁宗(Crouzon,CS)、闵克(Muenke,MS)、普菲弗(Pfeiffer,PS)和萨特雷-乔岑(Saethre Chotzen,SCS)是最常被诊断的综合征颅骨发育不良。本研究的目的是:(1)使用基于人工智能(AI)的方法在二维面部正面、侧面和外耳照片上训练一个创新模型,以协助诊断综合征颅畸形与对照;(2)筛选 AS、CS 和 PS 的基因型/表型相关性。我们回顾性地和前瞻性地收录了从 1979 年到 2023 年所有经基因诊断为 AS、CS、MS、PS 和 SCS 综合征患者的正面和侧面照片。经过基于深度学习的预处理,我们提取了几何和纹理特征,并使用 XGboost(梯度提升)对患者进行分类。该模型在一个独立的国际验证集上进行了测试,验证集包括经基因证实的患者和非综合症对照组。在 1979 年至 2023 年期间,我们共收集了 2228 张正面和侧面面部照片,这些照片对应 541 名患者。总之,验证集中 70.2% [0.593-0.797] (p < 0.001) 的患者得到了正确诊断。与克鲁宗-菲佛综合征(Crouzon-Pfeiffer Syndrome,CPS)中表皮生长因子受体 2(FGFR2)剪接供体位点相关的基因型会导致 CPS 表型较轻。在此,我们报告了一种利用人工智能自动检测综合颅畸形的新方法。
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AI-based diagnosis and phenotype – Genotype correlations in syndromic craniosynostoses
Apert (AS), Crouzon (CS), Muenke (MS), Pfeiffer (PS), and Saethre Chotzen (SCS) are among the most frequently diagnosed syndromic craniosynostoses. The aims of this study were (1) to train an innovative model using artificial intelligence (AI)–based methods on two-dimensional facial frontal, lateral, and external ear photographs to assist diagnosis for syndromic craniosynostoses vs controls, and (2) to screen for genotype/phenotype correlations in AS, CS, and PS. We included retrospectively and prospectively, from 1979 to 2023, all frontal and lateral pictures of patients genetically diagnosed with AS, CS, MS, PS and SCS syndromes. After a deep learning–based preprocessing, we extracted geometric and textural features and used XGboost (eXtreme Gradient Boosting) to classify patients. The model was tested on an independent international validation set of genetically confirmed patients and non-syndromic controls. Between 1979 and 2023, we included 2228 frontal and lateral facial photographs corresponding to 541 patients. In all, 70.2% [0.593–0.797] (p < 0.001) of patients in the validation set were correctly diagnosed. Genotypes linked to a splice donor site of FGFR2 in Crouzon-Pfeiffer syndrome (CPS) caused a milder phenotype in CPS. Here we report a new method for the automatic detection of syndromic craniosynostoses using AI.
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来源期刊
CiteScore
5.20
自引率
22.60%
发文量
117
审稿时长
70 days
期刊介绍: The Journal of Cranio-Maxillofacial Surgery publishes articles covering all aspects of surgery of the head, face and jaw. Specific topics covered recently have included: • Distraction osteogenesis • Synthetic bone substitutes • Fibroblast growth factors • Fetal wound healing • Skull base surgery • Computer-assisted surgery • Vascularized bone grafts
期刊最新文献
Complications following open treatment of frontal sinus fracture: A nationwide analysis of 1492 patients. Free-floating bone flap posterior cranial vault release in syndromic craniosynostosis. 3D analysis of long-term airway evolution following orthognathic approach of bimaxillary setback surgery without segmental osteotomy. Comparison of oral cancer versus competing factors as cause of death: Single institution experience with long-term follow up. Unmasking self-citations: A critical analysis using maxillofacial surgery literature as example.
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