Department of Radiation Oncology, University Hospital S. Chiara, Via Roma 55, 56100, Pisa, Italy.
Department of Physics, S. Luca Hospital, Via Guglielmo Lippi Francesconi 556, 55100, Lucca, Italy.
Strahlenther Onkol. 2021 Mar;197(3):209-218. doi: 10.1007/s00066-020-01697-7. Epub 2020 Oct 9.
To develop a videofluoroscopy-based predictive model of radiation-induced dysphagia (RID) by incorporating DVH parameters of swallowing organs at risk (SWOARs) in a machine learning analysis.
Videofluoroscopy (VF) was performed to assess the penetration-aspiration score (P/A) at baseline and at 6 and 12 months after RT. An RID predictive model was developed using dose to nine SWOARs and P/A-VF data at 6 and 12 months after treatment. A total of 72 dosimetric features for each patient were extracted from DVH and analyzed with linear support vector machine classification (SVC), logistic regression classification (LRC), and random forest classification (RFC).
38 patients were evaluable. The relevance of SWOARs DVH features emerged both at 6 months (AUC 0.82 with SVC; 0.80 with LRC; and 0.83 with RFC) and at 12 months (AUC 0.85 with SVC; 0.82 with LRC; and 0.94 with RFC). The SWOARs and the corresponding features with the highest relevance at 6 months resulted as the base of tongue (V65 and D), the superior (D) and medium constrictor muscle (V45, V55; V65; D; D; D and D), and the parotid glands (D and D). On the contrary, the features with the highest relevance at 12 months were the medium (V55; D and D) and inferior constrictor muscles (V55, V65 D and D), the glottis (V55 and D), the cricopharyngeal muscle (D), and the cervical esophagus (D).
We trained and cross-validated an RID predictive model with high discriminative ability at both 6 and 12 months after RT. We expect to improve the predictive power of this model by enlarging the number of training datasets.
通过在机器学习分析中纳入吞咽相关危及器官(SWOARs)的剂量-体积直方图(DVH)参数,开发一种基于视频透视术的放射性吞咽困难(RID)预测模型。
在放射治疗后 6 个月和 12 个月进行视频透视术(VF)评估以评估穿透-吸入评分(P/A)。使用治疗后 6 个月和 12 个月的 SWOAR 剂量和 P/A-VF 数据开发 RID 预测模型。从 DVH 中提取每位患者的 72 个剂量学特征,并使用线性支持向量机分类(SVC)、逻辑回归分类(LRC)和随机森林分类(RFC)进行分析。
38 例患者可评估。SWOARs DVH 特征在 6 个月(SVC 的 AUC 为 0.82;LRC 的 AUC 为 0.80;RFC 的 AUC 为 0.83)和 12 个月(SVC 的 AUC 为 0.85;LRC 的 AUC 为 0.82;RFC 的 AUC 为 0.94)时均具有相关性。在 6 个月时,具有最高相关性的 SWOARs 及其相应特征是舌底(V65 和 D)、上(D)和中缩肌(V45、V55;V65;D;D;D 和 D)和腮腺(D 和 D)。相反,在 12 个月时具有最高相关性的特征是中(V55;D 和 D)和下缩肌(V55、V65 D 和 D)、声门(V55 和 D)、环咽肌(D)和颈段食管(D)。
我们训练并交叉验证了一种在放射治疗后 6 个月和 12 个月具有高判别能力的 RID 预测模型。我们希望通过扩大训练数据集的数量来提高该模型的预测能力。