Currie Geoffrey M, Iqbal Basit M
Charles Sturt University, Australia.
Gujranwala Institute of Nuclear Medicine & Radiotherapy.
J Nucl Med Technol. 2021 Dec 7. doi: 10.2967/jnmt.121.263081.
While normal ranges for Tc thyroid percentage uptake vary, the seemingly intuitive evaluation of thyroid function does not reflect the complexity of thyroid pathology and biochemical status. The emergence of artificial intelligence (AI) in nuclear medicine has driven problem solving associated with logic and reasoning that warrant re-examination of established benchmarks in thyroid functional assessment. There were 123 patients retrospectively analysed in the study sample comparing scintigraphic findings to grounded truth established through biochemistry status. Conventional statistical approaches were used in conjunction with an artificial neural network (ANN) to determine predictors of thyroid function from data features. A convolutional neural network (CNN) was also used to extract features from the input tensor (images). Analysis was confounded by sub-clinical hyperthyroidism, primary hypothyroidism, sub-clinical hypothyroidism and T3 toxicosis. Binary accuracy for identifying hyperthyroidism was highest for thyroid uptake classification using a threshold of 4.5% (82.6%), followed by pooled physician 6interpretation with the aid of uptake values (82.3%). Visual evaluation without quantitative values reduced accuracy to 61.0% for pooled physician determinations and 61.4% classifying on the basis of thyroid gland intensity relative to salivary glands. The machine learning (ML) algorithm produced 84.6% accuracy, however, this included biochemistry features not available to the semantic analysis. The deep learning (DL) algorithm had an accuracy of 80.5% based on image inputs alone. Thyroid scintigraphy is useful in identifying hyperthyroid patients suitable for radioiodine therapy when using an appropriately validated cut-off for the patient population (4.5% in this population). ML ANN algorithms can be developed to improve accuracy as second readers systems when biochemistry results are available. DL CNN algorithms can be developed to improve accuracy in the absence of biochemistry results. ML and DL do not displace the role of the physician in thyroid scintigraphy but could be used as second reader systems to minimize errors and increase confidence.
虽然锝甲状腺摄取率的正常范围各不相同,但看似直观的甲状腺功能评估并不能反映甲状腺病理学和生化状态的复杂性。核医学中人工智能(AI)的出现推动了与逻辑和推理相关的问题解决,这就需要重新审视甲状腺功能评估中的既定基准。在该研究样本中,对123例患者进行了回顾性分析,将闪烁扫描结果与通过生化状态确定的基本事实进行比较。传统统计方法与人工神经网络(ANN)结合使用,从数据特征中确定甲状腺功能的预测指标。卷积神经网络(CNN)也被用于从输入张量(图像)中提取特征。分析受到亚临床甲状腺功能亢进、原发性甲状腺功能减退、亚临床甲状腺功能减退和T3中毒的干扰。使用4.5%的阈值进行甲状腺摄取分类时,识别甲状腺功能亢进的二元准确率最高(82.6%),其次是借助摄取值进行的综合医生解读(82.3%)。没有定量值的视觉评估使综合医生判断的准确率降至61.0%,基于甲状腺相对于唾液腺的强度进行分类的准确率降至61.4%。机器学习(ML)算法的准确率为84.6%,然而,这包括语义分析无法获得的生化特征。仅基于图像输入,深度学习(DL)算法的准确率为80.5%。当为患者群体使用经过适当验证的临界值(该群体为4.5%)时,甲状腺闪烁扫描有助于识别适合放射性碘治疗的甲状腺功能亢进患者。当有生化结果时,可以开发ML ANN算法作为第二阅读系统来提高准确率。在没有生化结果的情况下,可以开发DL CNN算法来提高准确率。ML和DL并不会取代医生在甲状腺闪烁扫描中的作用,但可以用作第二阅读系统,以尽量减少错误并增加信心。