Tseng Yujen, Ma Lili, Li Shaobo, Luo Tiancheng, Luo Jianjun, Zhang Wen, Wang Jian, Chen Shiyao
Department of Gastroenterology,Zhongshan Hosptial, Fudan University, China; Department of Digestive Diseases, Huashan Hospital, Fudan University, China.
Department of Endoscopy Center, Zhongshan Hospital, Fudan University, China.
Eur J Radiol. 2020 May;126:108927. doi: 10.1016/j.ejrad.2020.108927. Epub 2020 Mar 2.
Portal venous pressure (PVP) measurement is of clinical significance, especially in patients with portal hypertension. However, the invasive nature and associated complications limits its application. The aim of the study is to propose a noninvasive predictive model of PVP values based on CT-extracted radiomic features.
Radiomics PVP (rPVP) models based on liver, spleen and combined features were established on an experimental cohort of 169 subjects. Radiomics features were extracted from each ROI and reduced via the LASSO regression to achieve an optimal predictive formula. A validation cohort of 62 patients treated for gastroesophageal varices (GOV) was used to confirm the utility of rPVP in predicting variceal recurrence. The association between rPVP and response to treatment was observed.
Three separate predictive formula for PVP were derived from radiomics features. rPVP was significantly correlated to patient response to endoscopic treatment for GOV. Among which, the model containing both liver and spleen features has the highest predictability of variceal recurrence, with an optimal cut-off value at 29.102 mmHg (AUC 0.866). A Kaplan Meier analysis further confirmed the difference between patients with varying rPVP values.
PVP values can be accurately predicted by a non-invasive, CT derived radiomics model. rPVP serves as a non-invasive and precise reference for predicting treatment outcome for GOV secondary to portal hypertension.
门静脉压力(PVP)测量具有临床意义,尤其是在门静脉高压患者中。然而,其侵入性及相关并发症限制了它的应用。本研究的目的是基于CT提取的影像组学特征提出一种PVP值的非侵入性预测模型。
在169名受试者的实验队列中建立基于肝脏、脾脏及联合特征的影像组学PVP(rPVP)模型。从每个感兴趣区域提取影像组学特征,并通过LASSO回归进行降维以获得最佳预测公式。使用62名接受食管胃静脉曲张(GOV)治疗的患者组成的验证队列来证实rPVP在预测静脉曲张复发中的效用。观察rPVP与治疗反应之间的关联。
从影像组学特征中得出了三个独立的PVP预测公式。rPVP与GOV患者的内镜治疗反应显著相关。其中,包含肝脏和脾脏特征的模型对静脉曲张复发的预测性最高,最佳截断值为29.102 mmHg(AUC 0.866)。Kaplan Meier分析进一步证实了不同rPVP值患者之间的差异。
PVP值可通过非侵入性的、基于CT的影像组学模型准确预测。rPVP作为预测门静脉高压继发GOV治疗结果的非侵入性且精确的参考指标。