Department of Physics and Astronomy, University of Calgary, 2500 University Dr NW, Calgary, AB T2N 1N4, Canada.
Tom Baker Cancer Center, 1331 29 St NW, Calgary, AB, T2N 4N2, Canada.
Biomed Phys Eng Express. 2024 May 14;10(4). doi: 10.1088/2057-1976/ad4651.
. To investigate models developed using radiomic and dosiomic (multi-omics) features from planning and treatment imaging for late patient-reported dysphagia in head and neck radiotherapy.. Training (n = 64) and testing (n = 23) cohorts of head and neck cancer patients treated with curative intent chemo-radiotherapy with a follow-up time greater than 12 months were retrospectively examined. Patients completed the MD Anderson Dysphagia Inventory and a composite score ≤60 was interpreted as patient-reported dysphagia. A chart review collected baseline dysphagia and clinical factors. Multi-omic features were extracted from planning and last synthetic CT images using the pharyngeal constrictor muscle contours as a region of interest. Late patient-reported dysphagia models were developed using a random forest backbone, with feature selection and up-sampling methods to account for the imbalanced data. Models were developed and validated for multi-omic feature combinations for both timepoints.. A clinical and radiomic feature model developed using the planning CT achieved good performance (validation: sensitivity = 80 ± 27% / balanced accuracy = 71 ± 23%, testing: sensitivity = 80 ± 10% / balanced accuracy = 73 ± 11%). The synthetic CT models did not show improvement over the plan CT multi-omics models, with poor reliability of the radiomic features on these images. Dosiomic features extracted from the synthetic CT showed promise in predicting late patient-reported dysphagia.. Multi-omics models can predict late patient-reported dysphagia in head and neck radiotherapy patients. Synthetic CT dosiomic features show promise in developing successful models to account for changes in delivered dose distribution. Multi-center or prospective studies are required prior to clinical implementation of these models.
. 研究使用计划和治疗成像的放射组学和剂量组学(多组学)特征开发的模型,以预测头颈部放疗后患者报告的吞咽困难。.. 回顾性检查了接受根治性放化疗的头颈部癌症患者的训练(n=64)和测试(n=23)队列,随访时间大于 12 个月。患者完成了 MD 安德森吞咽障碍量表,综合评分≤60 被解释为患者报告的吞咽困难。通过病历回顾收集基线吞咽困难和临床因素。使用咽缩肌轮廓作为感兴趣区域,从计划和最后合成 CT 图像中提取多组学特征。使用随机森林主干,结合特征选择和上采样方法,开发了用于处理不平衡数据的晚期患者报告吞咽困难模型。针对这两个时间点的多组学特征组合开发和验证了模型。.. 使用计划 CT 开发的临床和放射组学特征模型表现良好(验证:敏感性=80±27%/平衡准确性=71±23%,测试:敏感性=80±10%/平衡准确性=73±11%)。合成 CT 模型没有显示出优于计划 CT 多组学模型的改善,这些图像上的放射组学特征的可靠性较差。从合成 CT 提取的剂量组学特征在预测晚期患者报告的吞咽困难方面显示出了希望。.. 多组学模型可预测头颈部放疗患者的晚期患者报告吞咽困难。合成 CT 剂量组学特征显示出开发成功模型的潜力,可用于解释剂量分布的变化。在这些模型临床应用之前,需要进行多中心或前瞻性研究。