Avci Seyma Nazli, Isiktas Gizem, Berber Eren
Department of Endocrine Surgery, Cleveland Clinic, Cleveland, Ohio, USA.
Department of General Surgery, Cleveland Clinic, Cleveland, Ohio, USA.
Ann Surg Oncol. 2022 Mar 28. doi: 10.1245/s10434-022-11632-y.
Parathyroid glands may be detected by their autofluorescence on near-infrared imaging. Nevertheless, recognition of parathyroid-specific autofluorescence requires a learning curve, with other unrelated bright signals causing confusion. The aim of this study was to find out whether machine learning could be used to facilitate identification of parathyroid-specific autofluorescence signals on intraoperative near-infrared images in patients undergoing thyroidectomy and parathyroidectomy procedures.
In an institutional review board-approved study, intraoperative near-infrared images of patients who underwent thyroidectomy and/or parathyroidectomy procedures within a year were used to develop an artificial intelligence model. Parathyroid-specific autofluorescence signals were marked with rectangles on intraoperative near-infrared still images and used for training a deep learning model. A randomly chosen 80% of the data were used for training, 10% for testing, and 10% for validation. Precision and recall of the model were calculated.
A total of 466 intraoperative near-infrared images of 197 patients who underwent thyroidectomy and/or parathyroidectomy procedures were analyzed. Procedures included total thyroidectomy in 54 patients, thyroid lobectomy in 24 patients, parathyroidectomy in 108 patients, and combined thyroidectomy and parathyroidectomy procedures in 11 patients. The overall recall and precision of the model were 90.5 and 95.7%, respectively.
To our knowledge, this is the first study that describes the use of artificial intelligence tools to assist in recognition of parathyroid-specific autofluorescence signals on near-infrared imaging. The model developed may have utility in facilitating training and decreasing the learning curve associated with the use of this technology.
甲状旁腺可通过其在近红外成像上的自发荧光被检测到。然而,识别甲状旁腺特异性自发荧光需要一个学习过程,因为其他不相关的明亮信号会造成混淆。本研究的目的是探究机器学习是否可用于辅助识别甲状腺切除术和甲状旁腺切除术患者术中近红外图像上的甲状旁腺特异性自发荧光信号。
在一项经机构审查委员会批准的研究中,使用一年内接受甲状腺切除术和/或甲状旁腺切除术患者的术中近红外图像来开发人工智能模型。在术中近红外静态图像上用矩形标记甲状旁腺特异性自发荧光信号,并用于训练深度学习模型。随机选取80%的数据用于训练,10%用于测试,10%用于验证。计算模型的精度和召回率。
共分析了197例接受甲状腺切除术和/或甲状旁腺切除术患者的466张术中近红外图像。手术包括54例全甲状腺切除术、24例甲状腺叶切除术、108例甲状旁腺切除术以及11例甲状腺切除术和甲状旁腺切除术联合手术。该模型的总体召回率和精度分别为90.5%和95.7%。
据我们所知,这是第一项描述使用人工智能工具辅助识别近红外成像上甲状旁腺特异性自发荧光信号的研究。所开发的模型可能有助于培训并缩短与使用该技术相关的学习过程。