Kellen L Mulford, Christina M Regan, Julia E Todderud, Charles P Nolte, Zachariah Pinter, Connie Chang-Chien, Shi Yan, Cody Wyles, Bardia Khosravi, Pouria Rouzrokh, Hilal Maradit Kremers, A Noelle Larson
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A deep learning classifier using the EfficientNet B6 architecture was trained on the spine training set. Hyperparameters and model architecture were tuned against the performance of the models in the validation set.</p><p><strong>Results: </strong>The trained classifiers had an overall accuracy on the test set of 1.00 on 1166 AP images and 1.00 on 843 lateral images. Precision ranged from 0.98 to 1.00 in the AP images, and from 0.91 to 1.00 on the lateral images. Lower performance was observed on classes with fewer than 100 images in the dataset. Final performance metrics were calculated on the assigned test set, including accuracy, precision, recall, and F1 score (the harmonic mean of precision and recall).</p><p><strong>Conclusions: </strong>A deep learning convolutional neural network classifier was trained to a high degree of accuracy to distinguish between 10 categories pre- and postoperative spine radiographs of patients with scoliosis. Observed performance was higher in more prevalent categories. These models represent an important step in developing an automatic system for data ingestion into large, labeled imaging registries.</p>","PeriodicalId":21796,"journal":{"name":"Spine deformity","volume":" ","pages":"1607-1614"},"PeriodicalIF":1.6000,"publicationDate":"2024-11-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Deep learning classification of pediatric spinal radiographs for use in large scale imaging registries.\",\"authors\":\"Kellen L Mulford, Christina M Regan, Julia E Todderud, Charles P Nolte, Zachariah Pinter, Connie Chang-Chien, Shi Yan, Cody Wyles, Bardia Khosravi, Pouria Rouzrokh, Hilal Maradit Kremers, A Noelle Larson\",\"doi\":\"10.1007/s43390-024-00933-9\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Purpose: </strong>The purpose of this study is to develop and apply an algorithm that automatically classifies spine radiographs of pediatric scoliosis patients.</p><p><strong>Methods: </strong>Anterior-posterior (AP) and lateral spine radiographs were extracted from the institutional picture archive for patients with scoliosis. 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引用次数: 0
摘要
目的:本研究旨在开发和应用一种算法,对小儿脊柱侧凸患者的脊柱X光片进行自动分类:方法:从脊柱侧凸患者的机构图片档案中提取脊柱前后位(AP)和侧位X光片。总共有 7777 张 AP 图像和 5621 张侧位图像。X光片被人工分为十个类别:AP和侧位图像各分为两个术前类别和三个术后类别。图像被分成训练集、验证集和测试集(70:15:15 比例分割)。使用 EfficientNet B6 架构的深度学习分类器在脊柱训练集上进行了训练。根据验证集中模型的性能对超参数和模型架构进行了调整:经过训练的分类器在 1166 张 AP 图像和 843 张侧位图像测试集上的总体准确率分别为 1.00 和 1.00。在 AP 图像中,精确度从 0.98 到 1.00 不等,在侧向图像中,精确度从 0.91 到 1.00 不等。在数据集中图像少于 100 张的类别中,性能较低。最终的性能指标是在指定的测试集上计算得出的,包括准确率、精确度、召回率和 F1 分数(精确度和召回率的调和平均值):训练出的深度学习卷积神经网络分类器能准确区分脊柱侧弯患者术前和术后的 10 个类别。在更普遍的类别中,观察到的性能更高。这些模型代表了开发自动系统的重要一步,该系统可将数据摄入大型标注成像登记处。
Deep learning classification of pediatric spinal radiographs for use in large scale imaging registries.
Purpose: The purpose of this study is to develop and apply an algorithm that automatically classifies spine radiographs of pediatric scoliosis patients.
Methods: Anterior-posterior (AP) and lateral spine radiographs were extracted from the institutional picture archive for patients with scoliosis. Overall, there were 7777 AP images and 5621 lateral images. Radiographs were manually classified into ten categories: two preoperative and three postoperative categories each for AP and lateral images. The images were split into training, validation, and testing sets (70:15:15 proportional split). A deep learning classifier using the EfficientNet B6 architecture was trained on the spine training set. Hyperparameters and model architecture were tuned against the performance of the models in the validation set.
Results: The trained classifiers had an overall accuracy on the test set of 1.00 on 1166 AP images and 1.00 on 843 lateral images. Precision ranged from 0.98 to 1.00 in the AP images, and from 0.91 to 1.00 on the lateral images. Lower performance was observed on classes with fewer than 100 images in the dataset. Final performance metrics were calculated on the assigned test set, including accuracy, precision, recall, and F1 score (the harmonic mean of precision and recall).
Conclusions: A deep learning convolutional neural network classifier was trained to a high degree of accuracy to distinguish between 10 categories pre- and postoperative spine radiographs of patients with scoliosis. Observed performance was higher in more prevalent categories. These models represent an important step in developing an automatic system for data ingestion into large, labeled imaging registries.
期刊介绍:
Spine Deformity the official journal of the?Scoliosis Research Society is a peer-refereed publication to disseminate knowledge on basic science and clinical research into the?etiology?biomechanics?treatment?methods and outcomes of all types of?spinal deformities. The international members of the Editorial Board provide a worldwide perspective for the journal's area of interest.The?journal?will enhance the mission of the Society which is to foster the optimal care of all patients with?spine?deformities worldwide. Articles published in?Spine Deformity?are Medline indexed in PubMed.? The journal publishes original articles in the form of clinical and basic research. Spine Deformity will only publish studies that have institutional review board (IRB) or similar ethics committee approval for human and animal studies and have strictly observed these guidelines. The minimum follow-up period for follow-up clinical studies is 24 months.