Department of Endocrine Surgery, Endocrinology and Metabolism Institute, Cleveland Clinic, OH.
Department of Endocrine Surgery, Endocrinology and Metabolism Institute, Cleveland Clinic, OH.
Surgery. 2024 Nov;176(5):1396-1401. doi: 10.1016/j.surg.2024.07.015. Epub 2024 Aug 14.
In thyroidectomy and parathyroidectomy procedures, diagnostic dilemmas related to whether an index tissue is of parathyroid or nonparathyroid origin frequently arise. Current options of frozen section and parathyroid aspiration are time-consuming. Parathyroid glands appear brighter than surrounding tissues on near-infrared autofluorescence imaging. The aim of this study was to develop an artificial intelligence model differentiating parathyroid tissue on surgical specimens based on near-infrared autofluorescence.
With institutional review board approval, an image library of ex vivo specimens obtained in thyroidectomy and parathyroidectomy procedures was created between November 2019 and April 2023 at a single academic center. Ex vivo autofluorescence images of surgically removed parathyroid glands, thyroid glands, lymph nodes, and thymic tissue were uploaded into an artificial intelligence platform. Two different models were trained, with the first model using autofluorescence images from all specimens, including thyroid, and the second model excluding thyroid, to prevent the effect of specimen size on the results. Deep-learning models were trained to detect autofluorescence signals specific to parathyroid glands. Randomly chosen 80% of data were used for training, 10% for validation, and 10% for testing. Recall, precision, and area under the curve of models were calculated.
Surgical procedures included 377 parathyroidectomies, 239 total thyroidectomies, 97 thyroid lobectomies, and 32 central neck dissections. For the development of the model, 1151 images from a total of 678 procedures were used. The dataset comprised 648 parathyroid, 379 thyroid, 104 lymph node, and 20 thymic tissue images. The overall precision, recall, and area under the curve of the model to detect parathyroid tissue were 96.5%, 96.5%, and 0.985, respectively. False negatives were related to dark and large parathyroid glands.
The visual deep-learning model developed to identify parathyroid tissue in ex vivo specimens during thyroidectomy and parathyroidectomy demonstrated a high sensitivity and positive predictive value. This suggests potential utility of near-infrared autofluorescence imaging to improve intraoperative efficiency by reducing the need for frozen sections and parathyroid hormone aspirations to confirm parathyroid tissue.
在甲状腺切除术和甲状旁腺切除术过程中,经常会出现关于索引组织是甲状旁腺还是非甲状旁腺来源的诊断难题。目前的冷冻切片和甲状旁腺抽吸选择既耗时。近红外自发荧光成像显示,甲状旁腺在组织中比周围组织更亮。本研究的目的是开发一种基于近红外自发荧光的人工智能模型,以区分手术标本中的甲状旁腺组织。
在机构审查委员会的批准下,于 2019 年 11 月至 2023 年 4 月期间,在一个学术中心创建了一个甲状腺切除术和甲状旁腺切除术过程中获得的离体标本图像库。上传了手术切除的甲状旁腺、甲状腺、淋巴结和胸腺组织的离体自发荧光图像到人工智能平台。训练了两个不同的模型,第一个模型使用包括甲状腺在内的所有标本的自发荧光图像,第二个模型排除了甲状腺,以防止标本大小对结果的影响。训练了深度学习模型来检测特定于甲状旁腺的自发荧光信号。随机选择 80%的数据用于训练,10%用于验证,10%用于测试。计算了模型的召回率、精度和曲线下面积。
手术过程包括 377 例甲状旁腺切除术、239 例甲状腺全切除术、97 例甲状腺叶切除术和 32 例中央颈部清扫术。为了开发模型,共使用了 678 例手术中的 1151 张图像。数据集包括 648 个甲状旁腺、379 个甲状腺、104 个淋巴结和 20 个胸腺组织图像。模型检测甲状旁腺组织的整体精度、召回率和曲线下面积分别为 96.5%、96.5%和 0.985。假阴性与深色和大的甲状旁腺有关。
在甲状腺切除术和甲状旁腺切除术过程中,为识别离体标本中的甲状旁腺组织而开发的视觉深度学习模型表现出高灵敏度和阳性预测值。这表明近红外自发荧光成像有可能通过减少对冷冻切片和甲状旁腺激素抽吸的需求来确认甲状旁腺组织,从而提高手术效率。