用于识别与儿童肺动脉狭窄相关的遗传综合征的面部识别模型。

IF 3.6 4区 医学 Q1 MEDICINE, GENERAL & INTERNAL Postgraduate Medical Journal Pub Date : 2024-07-29 DOI:10.1093/postmj/qgae095
Jun-Jun Shen, Qin-Chang Chen, Yu-Lu Huang, Kai Wu, Liu-Cheng Yang, Shu-Shui Wang
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引用次数: 0

摘要

背景:威廉姆斯-伯伦综合征(Williams-Beuren Syndrome)、努南综合征(Noonan Syndrome)和阿拉吉尔综合征(Alagille Syndrome)是常见的遗传综合征(GSs)类型,具有明显的面部特征、肺动脉狭窄和发育迟缓。在临床实践中,区分这三种遗传综合征仍是一项挑战。面部态势图是识别 Williams-Beuren 综合征、Noonan 综合征和 Alagille 综合征的诊断工具。预训练的基础模型(PFM)可视为小规模任务的基础。通过使用基础模型进行预训练,我们提出了用于识别这些综合症的面部识别模型:我们从被诊断患有威廉姆斯-伯恩综合征(174 人)、努南综合征(235 人)和阿拉吉尔综合征(51 人)的儿童以及未患有这些综合征的儿童(1206 人)中获得了 3297 张(1666 人)面部照片。照片被随机分为五个子集,每种综合征和非综合征在每个子集中平均随机分布。训练集和测试集的比例为 4:1。采用 ResNet-100 架构作为骨干模型。通过基础模型的预训练,我们构建了两个人脸识别模型:一个使用 ArcFace 损失函数,另一个使用 CosFace 损失函数。此外,我们还使用相同的架构和损失函数开发了两个模型,但没有进行预训练。我们对每个模型的准确度、精确度、召回率和 F1 分数进行了评估。最后,我们将人脸识别模型的性能与五位儿科医生的性能进行了比较:结果:在四个模型中,使用 PFM 和 CosFace 损失函数的 ResNet-100 的准确率最高(84.8%)。在相同的损失函数中,PFM 的性能显著提高(ArcFace 损失函数从 78.5% 提高到 84.5%,CosFace 损失函数从 79.8% 提高到 84.8%)。在使用和不使用 PFM 的情况下,CosFace 损失函数模型的性能与 ArcFace 损失函数模型相似(不使用 PFM 时为 79.8% vs 78.5%;使用 PFM 时为 84.8% vs 84.5%)。在五位儿科医生中,接受过遗传学培训的资历最深的儿科医生的准确率最高(0.700)。儿科医生的准确率和 F1 分数普遍低于模型:结论:基于面部识别的模型有可能提高对肺动脉狭窄的三种常见GS的识别率。PFM可能对建立面部识别筛选模型很有价值。关键信息 关于这一主题的已知信息: 遗传综合征(GSs)的早期识别对于肺动脉狭窄(PS)患儿的管理和预后至关重要。使用卷积神经网络(CNN)进行面部表型识别通常需要大规模的训练数据,这限制了其对遗传综合征的应用。本研究的贡献 我们利用卷积神经网络成功建立了基于人脸识别的多分类模型,准确识别了三种常见的 PS 相关 GS。带有预训练基础模型(PFM)和 CosFace 损失函数的 ResNet-100 获得了最佳准确率(84.8%)。使用基础模型进行预训练后,模型的性能明显提高,尽管损失函数类型的影响似乎很小。本研究可能对研究、实践或政策产生的影响: 基于面部识别的模型有可能改善对 PS 儿童 GS 的识别。PFM 可能对建立面部检测的识别模型很有价值。
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Facial recognition models for identifying genetic syndromes associated with pulmonary stenosis in children.

Background: Williams-Beuren syndrome, Noonan syndrome, and Alagille syndrome are common types of genetic syndromes (GSs) characterized by distinct facial features, pulmonary stenosis, and delayed growth. In clinical practice, differentiating these three GSs remains a challenge. Facial gestalts serve as a diagnostic tool for recognizing Williams-Beuren syndrome, Noonan syndrome, and Alagille syndrome. Pretrained foundation models (PFMs) can be considered the foundation for small-scale tasks. By pretraining with a foundation model, we propose facial recognition models for identifying these syndromes.

Methods: A total of 3297 (n = 1666) facial photos were obtained from children diagnosed with Williams-Beuren syndrome (n = 174), Noonan syndrome (n = 235), and Alagille syndrome (n = 51), and from children without GSs (n = 1206). The photos were randomly divided into five subsets, with each syndrome and non-GS equally and randomly distributed in each subset. The proportion of the training set and the test set was 4:1. The ResNet-100 architecture was employed as the backbone model. By pretraining with a foundation model, we constructed two face recognition models: one utilizing the ArcFace loss function, and the other employing the CosFace loss function. Additionally, we developed two models using the same architecture and loss function but without pretraining. The accuracy, precision, recall, and F1 score of each model were evaluated. Finally, we compared the performance of the facial recognition models to that of five pediatricians.

Results: Among the four models, ResNet-100 with a PFM and CosFace loss function achieved the best accuracy (84.8%). Of the same loss function, the performance of the PFMs significantly improved (from 78.5% to 84.5% for the ArcFace loss function, and from 79.8% to 84.8% for the CosFace loss function). With and without the PFM, the performance of the CosFace loss function models was similar to that of the ArcFace loss function models (79.8% vs 78.5% without PFM; 84.8% vs 84.5% with PFM). Among the five pediatricians, the highest accuracy (0.700) was achieved by the senior-most pediatrician with genetics training. The accuracy and F1 scores of the pediatricians were generally lower than those of the models.

Conclusions: A facial recognition-based model has the potential to improve the identification of three common GSs with pulmonary stenosis. PFMs might be valuable for building screening models for facial recognition. Key messages What is already known on this topic:  Early identification of genetic syndromes (GSs) is crucial for the management and prognosis of children with pulmonary stenosis (PS). Facial phenotyping with convolutional neural networks (CNNs) often requires large-scale training data, limiting its usefulness for GSs. What this study adds:  We successfully built multi-classification models based on face recognition using a CNN to accurately identify three common PS-associated GSs. ResNet-100 with a pretrained foundation model (PFM) and CosFace loss function achieved the best accuracy (84.8%). Pretrained with the foundation model, the performance of the models significantly improved, although the impact of the type of loss function appeared to be minimal. How this study might affect research, practice, or policy:  A facial recognition-based model has the potential to improve the identification of GSs in children with PS. The PFM might be valuable for building identification models for facial detection.

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来源期刊
Postgraduate Medical Journal
Postgraduate Medical Journal 医学-医学:内科
CiteScore
8.50
自引率
2.00%
发文量
131
审稿时长
2.5 months
期刊介绍: Postgraduate Medical Journal is a peer reviewed journal published on behalf of the Fellowship of Postgraduate Medicine. The journal aims to support junior doctors and their teachers and contribute to the continuing professional development of all doctors by publishing papers on a wide range of topics relevant to the practicing clinician and teacher. Papers published in PMJ include those that focus on core competencies; that describe current practice and new developments in all branches of medicine; that describe relevance and impact of translational research on clinical practice; that provide background relevant to examinations; and papers on medical education and medical education research. PMJ supports CPD by providing the opportunity for doctors to publish many types of articles including original clinical research; reviews; quality improvement reports; editorials, and correspondence on clinical matters.
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