Department of Thyroid Surgery, Fujian Medical University Union Hospital, Fuzhou, China.
College of Computer and Data Science, Fuzhou University, Fuzhou, China.
Head Neck. 2024 Aug;46(8):1975-1987. doi: 10.1002/hed.27629. Epub 2024 Feb 13.
The preservation of parathyroid glands is crucial in endoscopic thyroid surgery to prevent hypocalcemia and related complications. However, current methods for identifying and protecting these glands have limitations. We propose a novel technique that has the potential to improve the safety and efficacy of endoscopic thyroid surgery.
Our study aims to develop a deep learning model called PTAIR 2.0 (Parathyroid gland Artificial Intelligence Recognition) to enhance parathyroid gland recognition during endoscopic thyroidectomy. We compare its performance against traditional surgeon-based identification methods.
Parathyroid tissues were annotated in 32 428 images extracted from 838 endoscopic thyroidectomy videos, forming the internal training cohort. An external validation cohort comprised 54 full-length videos. Six candidate algorithms were evaluated to select the optimal one. We assessed the model's performance in terms of initial recognition time, identification duration, and recognition rate and compared it with the performance of surgeons.
Utilizing the YOLOX algorithm, we developed PTAIR 2.0, which demonstrated superior performance with an AP50 score of 92.1%. The YOLOX algorithm achieved a frame rate of 25.14 Hz, meeting real-time requirements. In the internal training cohort, PTAIR 2.0 achieved AP50 values of 94.1%, 98.9%, and 92.1% for parathyroid gland early prediction, identification, and ischemia alert, respectively. Additionally, in the external validation cohort, PTAIR outperformed both junior and senior surgeons in identifying and tracking parathyroid glands (p < 0.001).
The AI-driven PTAIR 2.0 model significantly outperforms both senior and junior surgeons in parathyroid gland identification and ischemia alert during endoscopic thyroid surgery, offering potential for enhanced surgical precision and patient outcomes.
在腔镜甲状腺手术中,保护甲状旁腺至关重要,以防止低钙血症和相关并发症。然而,目前识别和保护这些腺体的方法存在局限性。我们提出了一种新的技术,有可能提高腔镜甲状腺手术的安全性和有效性。
我们的研究旨在开发一种名为 PTAIR 2.0(甲状旁腺人工智能识别)的深度学习模型,以增强腔镜甲状腺切除术中甲状旁腺的识别。我们将其性能与传统的基于外科医生的识别方法进行比较。
在 838 个内镜甲状腺手术视频中提取的 32428 张图像中对甲状旁腺组织进行了注释,形成内部训练队列。外部验证队列由 54 个全长视频组成。评估了 6 种候选算法,以选择最佳算法。我们根据初始识别时间、识别持续时间和识别率评估模型的性能,并将其与外科医生的表现进行比较。
利用 YOLOX 算法,我们开发了 PTAIR 2.0,其 AP50 评分达到 92.1%,性能优越。YOLOX 算法的帧率为 25.14 Hz,满足实时要求。在内部训练队列中,PTAIR 2.0 对甲状旁腺早期预测、识别和缺血预警的 AP50 值分别达到 94.1%、98.9%和 92.1%。此外,在外部验证队列中,PTAIR 在识别和跟踪甲状旁腺方面优于初级和高级外科医生(p<0.001)。
在腔镜甲状腺手术中,基于人工智能的 PTAIR 2.0 模型在甲状旁腺的识别和缺血预警方面明显优于高级和初级外科医生,为提高手术精度和患者预后提供了潜力。