自动预测分化型甲状腺癌患者肺转移灶中的非碘-avid 状态,以便对其进行放射性 I131 治疗

Xinyi Gao, Haoyi Chen, Yun Wang, Feijia Xu, Anni Zhang, Yong Yang, Yajia Gu
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引用次数: 0

摘要

分化型甲状腺癌(DTC)发病率的增长与胰岛素抵抗和代谢综合征有关。为防止不必要的放射性碘治疗(RAI),迫切需要开发有效的影像诊断工具来预测分化型甲状腺癌(DTC)患者肺转移瘤(LMs)的非碘亲和性状态。原始队列由1962名接受胸部CT和治疗后放射性碘SPECT检查的连续DTC患者的预处理LMs组成,这些患者最初被诊断为LMs。在使用 SE V-Net 进行自动病灶分割后,对 SE Net 深度学习进行了训练,以预测 LM 的非碘亲和性状态。外部验证队列包括来自其他两家医院的 24 名连续患者的 123 个预处理 LM。SE-Net 深度学习网络在内部和外部验证中的接收者操作特征曲线下面积(AUC)值分别为 0.879(95% 置信区间:0.852-0.906)和 0.713(95% 置信区间:0.613-0.813)。随着 LM 直径从≥10 毫米减小到≤4 毫米,AUC 保持相对稳定,对于最小结节(≤4 毫米),模型的 AUC 为 0.783。该研究提出了一种无创、低放射性和全自动的方法,有助于选择合适的 DTC 患者进行 LM 的 RAI 治疗。针对更大的研究队列和相关代谢因素开展的进一步前瞻性多中心研究应能解决全面临床转化的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic prediction of non-iodine-avid status in lung metastases for radioactive I131 treatment in differentiated thyroid cancer patients
The growing incidence of differentiated thyroid cancer (DTC) have been linked to insulin resistance and metabolic syndrome. The imperative need for developing effective diagnostic imaging tools to predict the non-iodine-avid status of lung metastasis (LMs) in differentiated thyroid cancer (DTC) patients is underscored to prevent unnecessary radioactive iodine treatment (RAI).Primary cohort consisted 1962 pretreated LMs of 496 consecutive DTC patients with pretreated initially diagnosed LMs who underwent chest CT and subsequent post-treatment radioiodine SPECT. After automatic lesion segmentation by SE V-Net, SE Net deep learning was trained to predict non-iodine-avid status of LMs. External validation cohort contained 123 pretreated LMs of 24 consecutive patients from other two hospitals. Stepwise validation was further performed according to the nodule’s largest diameter.The SE-Net deep learning network yielded area under the receiver operating characteristic curve (AUC) values of 0.879 (95% confidence interval: 0.852–0.906) and 0.713 (95% confidence interval: 0.613–0.813) for internal and external validation. With the LM diameter decreasing from ≥10mm to ≤4mm, the AUCs remained relatively stable, for smallest nodules (≤4mm), the model yielded an AUC of 0.783. Decision curve analysis showed that most patients benefited using deep learning to decide radioactive I131 treatment.This study presents a noninvasive, less radioactive and fully automatic approach that can facilitate suitable DTC patient selection for RAI therapy of LMs. Further prospective multicenter studies with larger study cohorts and related metabolic factors should address the possibility of comprehensive clinical transformation.
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