Division of Endocrine Surgery, Department of Surgery, Samsung Medical Center, 81 Irwon-ro, Gangnam-gu, Seoul, Korea.
Department of Digital Media, The Catholic University of Korea, 43, Jibong-ro, Wonmi-gu, Bucheon, Gyeonggi, 14662, Korea.
Surg Endosc. 2024 Oct;38(10):5732-5745. doi: 10.1007/s00464-024-11115-z. Epub 2024 Aug 13.
Postoperative hypoparathyroidism is a major complication of thyroidectomy, occurring when the parathyroid glands are inadvertently damaged during surgery. Although intraoperative images are rarely used to train artificial intelligence (AI) because of its complex nature, AI may be trained to intraoperatively detect parathyroid glands using various augmentation methods. The purpose of this study was to train an effective AI model to detect parathyroid glands during thyroidectomy.
Video clips of the parathyroid gland were collected during thyroid lobectomy procedures. Confirmed parathyroid images were used to train three types of datasets according to augmentation status: baseline, geometric transformation, and generative adversarial network-based image inpainting. The primary outcome was the average precision of the performance of AI in detecting parathyroid glands.
152 Fine-needle aspiration-confirmed parathyroid gland images were acquired from 150 patients who underwent unilateral lobectomy. The average precision of the AI model in detecting parathyroid glands based on baseline data was 77%. This performance was enhanced by applying both geometric transformation and image inpainting augmentation methods, with the geometric transformation data augmentation dataset showing a higher average precision (79%) than the image inpainting model (78.6%). When this model was subjected to external validation using a completely different thyroidectomy approach, the image inpainting method was more effective (46%) than both the geometric transformation (37%) and baseline (33%) methods.
This AI model was found to be an effective and generalizable tool in the intraoperative identification of parathyroid glands during thyroidectomy, especially when aided by appropriate augmentation methods. Additional studies comparing model performance and surgeon identification, however, are needed to assess the true clinical relevance of this AI model.
甲状旁腺功能减退症是甲状腺切除术的主要并发症,当甲状旁腺在手术中被无意中损伤时就会发生这种情况。尽管由于其复杂性,术中图像很少用于训练人工智能(AI),但可以使用各种增强方法来训练 AI 以在手术中检测甲状旁腺。本研究的目的是训练有效的 AI 模型,以在甲状腺切除术中检测甲状旁腺。
在甲状腺叶切除术过程中收集甲状旁腺的视频片段。使用证实的甲状旁腺图像,根据增强状态训练三种类型的数据集:基线、几何变换和基于生成对抗网络的图像补全。主要结果是 AI 检测甲状旁腺的性能的平均精度。
从 150 名接受单侧叶切除术的患者中获得了 152 个细针抽吸确认的甲状旁腺图像。基于基线数据的 AI 模型检测甲状旁腺的平均精度为 77%。通过应用几何变换和图像补全增强方法,提高了性能,其中几何变换数据增强数据集的平均精度(79%)高于图像补全模型(78.6%)。当使用完全不同的甲状腺切除术方法对该模型进行外部验证时,图像补全方法比几何变换(37%)和基线(33%)方法更有效(46%)。
该 AI 模型被发现是甲状腺切除术中识别甲状旁腺的一种有效且可推广的工具,尤其是在使用适当的增强方法时。然而,需要进行更多的比较模型性能和外科医生识别的研究,以评估该 AI 模型的真正临床相关性。