Conditional generative adversarial network-assisted system for radiation-free evaluation of scoliosis using a single smartphone photograph: a model development and validation study.

IF 9.6 1区 医学 Q1 MEDICINE, GENERAL & INTERNAL
EClinicalMedicine Pub Date : 2024-08-16 eCollection Date: 2024-09-01 DOI:10.1016/j.eclinm.2024.102779
Zhong He, Neng Lu, Yi Chen, Elvis Chun-Sing Chui, Zhen Liu, Xiaodong Qin, Jie Li, Shengru Wang, Junlin Yang, Zhiwei Wang, Yimu Wang, Yong Qiu, Wayne Yuk-Wai Lee, Jack Chun-Yiu Cheng, Kenneth Guangpu Yang, Adam Yiu-Chung Lau, Xiaoli Liu, Xipu Chen, Wu-Jun Li, Zezhang Zhu
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引用次数: 0

Abstract

Background: Adolescent idiopathic scoliosis (AIS) is the most common spinal disorder in children, characterized by insidious onset and rapid progression, which can lead to severe consequences if not detected in a timely manner. Currently, the diagnosis of AIS primarily relies on X-ray imaging. However, due to limitations in healthcare access and concerns over radiation exposure, this diagnostic method cannot be widely adopted. Therefore, we have developed and validated a screening system using deep learning technology, capable of generating virtual X-ray images (VXI) from two-dimensional Red Green Blue (2D-RGB) images captured by a smartphone or camera to assist spine surgeons in the rapid, accurate, and non-invasive assessment of AIS.

Methods: We included 2397 patients with AIS and 48 potential patients with AIS who visited four medical institutions in mainland China from June 11th 2014 to November 28th 2023. Participants data included standing full-spine X-ray images captured by radiology technicians and 2D-RGB images taken by spine surgeons using a camera. We developed a deep learning model based on conditional generative adversarial networks (cGAN) called Swin-pix2pix to generate VXI on retrospective training (n = 1842) and validation (n = 100) dataset, then validated the performance of VXI in quantifying the curve type and severity of AIS on retrospective internal (n = 100), external (n = 135), and prospective test datasets (n = 268). The prospective test dataset included 268 participants treated in Nanjing, China, from April 19th, 2023, to November 28th, 2023, comprising 220 patients with AIS and 48 potential patients with AIS. Their data underwent strict quality control to ensure optimal data quality and consistency.

Findings: Our Swin-pix2pix model generated realistic VXI, with the mean absolute error (MAE) for predicting the main and secondary Cobb angles of AIS significantly lower than other baseline cGAN models, at 3.2° and 3.1° on prospective test dataset. The diagnostic accuracy for scoliosis severity grading exceeded that of two spine surgery experts, with accuracy of 0.93 (95% CI [0.91, 0.95]) in main curve and 0.89 (95% CI [0.87, 0.91]) in secondary curve. For main curve position and curve classification, the predictive accuracy of the Swin-pix2pix model also surpassed that of the baseline cGAN models, with accuracy of 0.93 (95% CI [0.90, 0.95]) for thoracic curve and 0.97 (95% CI [0.96, 0.98]), achieving satisfactory results on three external datasets as well.

Interpretation: Our developed Swin-pix2pix model holds promise for using a single photo taken with a smartphone or camera to rapidly assess AIS curve type and severity without radiation, enabling large-scale screening. However, limited data quality and quantity, a homogeneous participant population, and rotational errors during imaging may affect the applicability and accuracy of the system, requiring further improvement in the future.

Funding: National Key R&D Program of China, Natural Science Foundation of Jiangsu Province, China Postdoctoral Science Foundation, Nanjing Medical Science and Technology Development Foundation, Jiangsu Provincial Key Research and Development Program, and Jiangsu Provincial Medical Innovation Centre of Orthopedic Surgery.

利用单张智能手机照片对脊柱侧弯进行无辐射评估的条件生成对抗网络辅助系统:模型开发与验证研究。
背景:青少年特发性脊柱侧凸(AIS)是儿童中最常见的脊柱疾病,其特点是起病隐匿、进展迅速,如不及时发现,可导致严重后果。目前,AIS 的诊断主要依靠 X 射线成像。然而,由于医疗条件的限制和对辐射的担忧,这种诊断方法还不能被广泛采用。因此,我们利用深度学习技术开发并验证了一种筛查系统,该系统能够从智能手机或相机拍摄的二维红绿蓝(2D-RGB)图像生成虚拟 X 光图像(VXI),以协助脊柱外科医生快速、准确、无创地评估 AIS:我们纳入了2014年6月11日至2023年11月28日期间在中国大陆四家医疗机构就诊的2397名AIS患者和48名潜在AIS患者。参与者的数据包括放射科技术人员拍摄的站立全脊柱 X 光图像和脊柱外科医生使用相机拍摄的 2D-RGB 图像。我们开发了基于条件生成对抗网络(cGAN)的深度学习模型Swin-pix2pix,在回顾性训练数据集(n = 1842)和验证数据集(n = 100)上生成VXI,然后在回顾性内部数据集(n = 100)、外部数据集(n = 135)和前瞻性测试数据集(n = 268)上验证VXI在量化AIS曲线类型和严重程度方面的性能。前瞻性测试数据集包括 2023 年 4 月 19 日至 2023 年 11 月 28 日期间在中国南京接受治疗的 268 名参与者,其中包括 220 名 AIS 患者和 48 名潜在 AIS 患者。他们的数据经过了严格的质量控制,以确保最佳的数据质量和一致性:我们的 Swin-pix2pix 模型生成了真实的 VXI,在预测 AIS 的主 Cobb 角和次要 Cobb 角时,平均绝对误差 (MAE) 明显低于其他基线 cGAN 模型,在前瞻性测试数据集上分别为 3.2° 和 3.1°。脊柱侧弯严重程度分级的诊断准确率超过了两名脊柱外科专家的诊断准确率,主曲线准确率为 0.93(95% CI [0.91,0.95]),次曲线准确率为 0.89(95% CI [0.87,0.91])。在主曲线位置和曲线分类方面,Swin-pix2pix 模型的预测准确率也超过了基线 cGAN 模型,胸椎曲线准确率为 0.93(95% CI [0.90,0.95]),副曲线准确率为 0.97(95% CI [0.96,0.98]),在三个外部数据集上也取得了令人满意的结果:我们开发的 Swin-pix2pix 模型有望在无辐射的情况下使用智能手机或相机拍摄的单张照片快速评估 AIS 曲线类型和严重程度,从而实现大规模筛查。然而,有限的数据质量和数量、同质化的参与人群以及成像过程中的旋转误差可能会影响该系统的适用性和准确性,需要在未来进一步改进:国家重点研发计划、江苏省自然科学基金、中国博士后科学基金、南京医学科技发展基金会、江苏省重点研发计划、江苏省骨科医学创新中心。
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
EClinicalMedicine
EClinicalMedicine Medicine-Medicine (all)
CiteScore
18.90
自引率
1.30%
发文量
506
审稿时长
22 days
期刊介绍: eClinicalMedicine is a gold open-access clinical journal designed to support frontline health professionals in addressing the complex and rapid health transitions affecting societies globally. The journal aims to assist practitioners in overcoming healthcare challenges across diverse communities, spanning diagnosis, treatment, prevention, and health promotion. Integrating disciplines from various specialties and life stages, it seeks to enhance health systems as fundamental institutions within societies. With a forward-thinking approach, eClinicalMedicine aims to redefine the future of healthcare.
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