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基于机器学习对接受肿瘤细胞减灭术的晚期高级别浆液性卵巢癌患者入住重症监护病房的风险预测:利兹-纳塔尔评分

Machine Learning-Based Risk Prediction of Critical Care Unit Admission for Advanced Stage High Grade Serous Ovarian Cancer Patients Undergoing Cytoreductive Surgery: The Leeds-Natal Score.

作者信息

Laios Alexandros, De Oliveira Silva Raissa Vanessa, Dantas De Freitas Daniel Lucas, Tan Yong Sheng, Saalmink Gwendolyn, Zubayraeva Albina, Johnson Racheal, Kaufmann Angelika, Otify Mohammed, Hutson Richard, Thangavelu Amudha, Broadhead Tim, Nugent David, Theophilou Georgios, Gomes de Lima Kassio Michell, De Jong Diederick

机构信息

Department of Gynaecologic Oncology, St James's University Hospital, Leeds LS9 7TF, UK.

Department of Chemistry, Federal University of Rio Grande do Norte, Natal CEP 59078-970, Brazil.

出版信息

J Clin Med. 2021 Dec 24;11(1):87. doi: 10.3390/jcm11010087.

Abstract

Achieving complete surgical cytoreduction in advanced stage high grade serous ovarian cancer (HGSOC) patients warrants an availability of Critical Care Unit (CCU) beds. Machine Learning (ML) could be helpful in monitoring CCU admissions to improve standards of care. We aimed to improve the accuracy of predicting CCU admission in HGSOC patients by ML algorithms and developed an ML-based predictive score. A cohort of 291 advanced stage HGSOC patients with fully curated data was selected. Several linear and non-linear distances, and quadratic discriminant ML methods, were employed to derive prediction information for CCU admission. When all the variables were included in the model, the prediction accuracies were higher for linear discriminant (0.90) and quadratic discriminant (0.93) methods compared with conventional logistic regression (0.84). Feature selection identified pre-treatment albumin, surgical complexity score, estimated blood loss, operative time, and bowel resection with stoma as the most significant prediction features. The real-time prediction accuracy of the Graphical User Interface CCU calculator reached 95%. Limited, potentially modifiable, mostly intra-operative factors contributing to CCU admission were identified and suggest areas for targeted interventions. The accurate quantification of CCU admission patterns is critical information when counseling patients about peri-operative risks related to their cytoreductive surgery.

摘要

在晚期高级别浆液性卵巢癌(HGSOC)患者中实现完全手术细胞减灭需要有重症监护病房(CCU)床位。机器学习(ML)有助于监测CCU的入院情况,以提高护理标准。我们旨在通过ML算法提高HGSOC患者CCU入院预测的准确性,并开发了一种基于ML的预测评分。选择了一组291例具有完整整理数据的晚期HGSOC患者。采用了几种线性和非线性距离方法以及二次判别ML方法来获取CCU入院的预测信息。当所有变量都纳入模型时,与传统逻辑回归(0.84)相比,线性判别法(0.90)和二次判别法(0.93)的预测准确率更高。特征选择确定治疗前白蛋白、手术复杂程度评分、估计失血量、手术时间和带造口的肠切除术为最重要的预测特征。图形用户界面CCU计算器的实时预测准确率达到了95%。确定了导致CCU入院的有限的、可能可改变的、主要是术中因素,并提出了有针对性干预的领域。在向患者咨询与细胞减灭手术相关的围手术期风险时,准确量化CCU入院模式是关键信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b3f1/8745521/f1bddc37ff50/jcm-11-00087-g001.jpg

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