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基于超声特征和细胞学分类的甲状腺恶性结节术前人工智能诊断。

Artificial Intelligence for Pre-operative Diagnosis of Malignant Thyroid Nodules Based on Sonographic Features and Cytology Category.

机构信息

Monash University Endocrine Surgery Unit, The Alfred Hospital, 55 Commercial Road, Melbourne, VIC 3004, Australia.

Department of Surgery, Central Clinical School, Monash University, Melbourne, Australia.

出版信息

World J Surg. 2023 Feb;47(2):330-339. doi: 10.1007/s00268-022-06798-1. Epub 2022 Nov 6.

Abstract

BACKGROUND

Current diagnosis and classification of thyroid nodules are susceptible to subjective factors. Despite widespread use of ultrasonography (USG) and fine needle aspiration cytology (FNAC) to assess thyroid nodules, the interpretation of results is nuanced and requires specialist endocrine surgery input. Using readily available pre-operative data, the aims of this study were to develop artificial intelligence (AI) models to classify nodules into likely benign or malignant and to compare the diagnostic performance of the models.

METHODS

Patients undergoing surgery for thyroid nodules between 2010 and 2020 were recruited from our institution's database into training and testing groups. Demographics, serum TSH level, cytology, ultrasonography features and histopathology data were extracted. The training group USG images were re-reviewed by a study radiologist experienced in thyroid USG, who reported the relevant features and supplemented with data extracted from existing reports to reduce sampling bias. Testing group USG features were extracted solely from existing reports to reflect real-life practice of a non-thyroid specialist. We developed four AI models based on classification algorithms (k-Nearest Neighbour, Support Vector Machine, Decision Tree, Naïve Bayes) and evaluated their diagnostic performance of thyroid malignancy.

RESULTS

In the training group (n = 857), 75% were female and 27% of cases were malignant. The testing group (n = 198) consisted of 77% females and 17% malignant cases. Mean age was 54.7 ± 16.2 years for the training group and 50.1 ± 17.4 years for the testing group. Following validation with the testing group, support vector machine classifier was found to perform best in predicting final histopathology with an accuracy of 89%, sensitivity 89%, specificity 83%, F-score 94% and AUROC 0.86.

CONCLUSION

We have developed a first of its kind, pilot AI model that can accurately predict malignancy in thyroid nodules using USG features, FNAC, demographics and serum TSH. There is potential for a model like this to be used as a decision support tool in under-resourced areas as well as by non-thyroid specialists.

摘要

背景

目前甲状腺结节的诊断和分类易受主观因素影响。尽管广泛使用超声(USG)和细针穿刺细胞学(FNAC)来评估甲状腺结节,但结果的解释是微妙的,需要内分泌外科专家的输入。本研究旨在利用术前可获得的常规数据,开发人工智能(AI)模型将结节分类为可能良性或恶性,并比较模型的诊断性能。

方法

从我们机构的数据库中招募了 2010 年至 2020 年间因甲状腺结节接受手术的患者,将其分为训练组和测试组。提取了人口统计学、血清 TSH 水平、细胞学、超声特征和组织病理学数据。由一位经验丰富的甲状腺超声研究放射科医生重新审查训练组的 USG 图像,报告相关特征,并补充从现有报告中提取的数据,以减少抽样偏差。仅从现有报告中提取测试组的 USG 特征,以反映非甲状腺专家的实际实践。我们基于分类算法(k-最近邻、支持向量机、决策树、朴素贝叶斯)开发了四个 AI 模型,并评估了它们对甲状腺恶性肿瘤的诊断性能。

结果

在训练组(n=857)中,75%为女性,27%为恶性病例。测试组(n=198)中,77%为女性,17%为恶性病例。训练组的平均年龄为 54.7±16.2 岁,测试组为 50.1±17.4 岁。使用测试组进行验证后,发现支持向量机分类器在预测最终组织病理学方面表现最佳,准确率为 89%,灵敏度为 89%,特异性为 83%,F 值为 94%,AUROC 为 0.86。

结论

我们开发了第一个基于超声特征、FNAC、人口统计学和血清 TSH 能够准确预测甲状腺结节恶性程度的 AI 模型。这种模型有可能成为资源匮乏地区以及非甲状腺专家的决策支持工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2911/9803749/e3674bd342ef/268_2022_6798_Fig1_HTML.jpg

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