Zisiopoulou Maria, Berkowitsch Alexander, Neuber Ralf, Gouveris Haralampos, Fichtlscherer Stephan, Walther Thomas, Vasa-Nicotera Mariuca, Seppelt Philipp
Department of Cardiology, University Hospital Frankfurt, Goethe University Frankfurt am Main, 60590 Frankfurt am Main, Germany.
Quality Management, Department of Otorhinolaryngology, University Medical Center Mainz, 55131 Mainz, Germany.
J Pers Med. 2022 Feb 24;12(3):346. doi: 10.3390/jpm12030346.
Background: The aim of this study was to identify pre-operative parameters able to predict length of stay (LoS) based on clinical data and patient-reported outcome measures (PROMs) from a scorecard database in patients with significant aortic stenosis who underwent TAVI (transfemoral aortic valve implantation). Methods: 302 participants (51.7% males, age range 78.2−84.2 years.) were prospectively recruited. After computing the median LoS value (=6 days, range = 5−8 days), we implemented a decision tree algorithm by setting dichotomized values at median LoS as the dependent variable and assessed baseline clinical variables and PROMs (Clinical Frailty Scale (CFS), EuroQol-5 Dimension-5 Levels (EQ-5D) and Kansas City Cardiomyopathy Questionnaire (KCCQ)) as potential predictors. Results: Among clinical parameters, only peripheral arterial disease (p = 0.029, HR = 1.826) and glomerular filtration rate (GFR, cut-off < 33 mL/min/1.73 m2, p = 0.003, HR = 2.252) were predictive of LoS. Additionally, two PROMs (CFS; cut-off = 3, p < 0.001, HR = 1.324 and KCCQ; cut-off = 30, p = 0.003, HR = 2.274) were strong predictors. Further, a risk score for LoS (RS_LoS) was calculated based on these predictors. Patients with RS_LoS = 0 had a median LoS of 5 days; patients RS_LoS ≥ 3 had a median LoS of 8 days. Conclusions: based on the pre-operative values of the above four predictors, a personalized prediction of LoS after TAVI can be achieved.
本研究旨在基于临床数据和患者报告结局指标(PROMs),从接受经股动脉主动脉瓣植入术(TAVI)的重度主动脉瓣狭窄患者的记分卡数据库中识别能够预测住院时间(LoS)的术前参数。方法:前瞻性招募了302名参与者(男性占51.7%,年龄范围78.2 - 84.2岁)。在计算出LoS的中位数(=6天,范围 = 5 - 8天)后,我们实施了一种决策树算法,将LoS中位数的二分值设置为因变量,并评估基线临床变量和PROMs(临床衰弱量表(CFS)、欧洲五维健康量表(EQ - 5D)和堪萨斯城心肌病问卷(KCCQ))作为潜在预测因素。结果:在临床参数中,只有外周动脉疾病(p = 0.029,HR = 1.826)和肾小球滤过率(GFR,临界值 < 33 mL/min/1.73 m²,p = 0.003,HR = 2.252)可预测LoS。此外,两个PROMs(CFS;临界值 = 3,p < 0.001,HR = 1.324和KCCQ;临界值 = 30,p = 0.003,HR = 2.274)是强有力的预测因素。此外,基于这些预测因素计算了LoS的风险评分(RS_LoS)。RS_LoS = 0的患者LoS中位数为5天;RS_LoS≥3的患者LoS中位数为8天。结论:基于上述四个预测因素的术前值,可以实现TAVI术后LoS的个性化预测。