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Customized Prediction of Short Length of Stay Following Elective Cardiac Surgery in Elderly Patients Using a Genetic Algorithm

机译:使用遗传算法的老年患者择期心脏手术后短期停留时间的定制预测

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Objective: To develop a customized short LOS (gery, using local data and a computational feature selection algorithm. Design: Utilization of a machine learning algorithm in a prospectively collected STS database consisting of patients who received cardiac surgery between January 2002 and June 2011. Setting: Urban tertiary-care center. Participants: Geriatric patients aged 70 years or older at the time of cardiac surgery. Interventions: None. Measurements and Main Results: Predefined morbidity and mortality events were collected from the STS database. 23 clinically relevant predictors were investigated for short LOS prediction with a genetic algorithm (GenAlg) in 1426 patients. Due to the absence of an STS model for their particular surgery type, STS risk scores were unavailable for 771 patients. STS prediction achieved an AUC of 0.629 while the GenAlg achieved AUCs of 0.573 (in those with STS scores) and 0.691 (in those without STS scores). Among the patients with STS scores, the GenAlg features significantly associated with shorter LOS were absence of congestive heart failure (CHF) (OR = 0.59, p = 0.04), aortic valve procedure (OR = 1.54, p = 0.04), and shorter cross clamp time (OR = 0.99, p = 0.004). In those without STS prediction, short LOS was significantly correlated with younger age (OR = 0.93, p 0.001), absence of CHF (OR = 0.53, p = 0.007), no preoperative use of beta blockers (OR = 0.66, p = 0.03), and shorter cross clamp time (OR = 0.99, p 0.001). Conclusion: While the GenAlg-based models did not outperform STS prediction for patients with STS risk scores, our local-data-driven approach reliably predicted short LOS for cardiac surgery types that do not allow STS risk calculation. We advocate that each institution with sufficient observational data should build their own cardiac surgery risk models.
机译:目的:利用本地数据和计算特征选择算法,开发定制的短时LOS(gery)。设计:在2002年1月至2011年6月之间接受心脏手术的患者组成的前瞻性收集的STS数据库中使用机器学习算法。 :城市三级护理中心参加者:心脏外科手术时年满70岁的老年患者干预措施:无测量和主要结果:从STS数据库中收集预先定义的发病率和死亡率事件,研究23种临床相关的预测因素使用遗传算法(GenAlg)对1426例患者进行短期LOS预测。由于缺乏针对其特定手术类型的STS模型,771例患者无法获得STS风险评分。STS预测获得的AUC为0.629而GenAlg达到的AUC分别为0.573(有STS评分的患者)和0.691(有STS评分的患者)。与LOS缩短显着相关的g个特征是无充血性心力衰竭(CHF)(OR = 0.59,p = 0.04),主动脉瓣手术(OR = 1.54,p = 0.04)和较短的交叉钳夹时间(OR = 0.99,p = 0.004)。在没有STS预测的患者中,短期LOS与年龄较小(OR = 0.93,p 0.001),CHF缺失(OR = 0.53,p = 0.007),术前未使用β受体阻滞剂(OR = 0.66,p = 0.03)显着相关。 )和较短的交叉钳位时间(OR = 0.99,p 0.001)。结论:尽管基于GenAlg的模型对于具有STS风险评分的患者并没有优于STS预测,但我们的本地数据驱动方法可靠地预测了无法进行STS风险计算的心脏手术类型的短期LOS。我们主张,每个具有足够观察数据的机构都应建立自己的心脏手术风险模型。

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