Pediatric cardiac surgery: machine learning models for postoperative complication prediction

被引:2
作者
Florquin, Remi [1 ,2 ]
Florquin, Renaud [3 ]
Schmartz, Denis [4 ]
Dony, Philippe [1 ]
Briganti, Giovanni [2 ]
机构
[1] CHU Charleroi, Dept Anesthesiol, Chaussee Bruxelles 140, B-6042 Lodelinsart, Belgium
[2] Mons Univ, Chair Artificial Intelligence & Digital Med, B-7000 Mons, Belgium
[3] Floconsult SPRL, B-1480 Tubize, Belgium
[4] Univ Libre Bruxelles, Hop Univ Bruxelles HUB, Dept Anesthesiol, B-1070 Brussels, Belgium
关键词
Anesthesiology; Artificial intelligence; Machine learning; Pediatric cardiac surgery; INTENSIVE-CARE; ANESTHESIA; MORTALITY; MANAGEMENT;
D O I
10.1007/s00540-024-03377-7
中图分类号
R614 [麻醉学];
学科分类号
100217 ;
摘要
PurposeManaging children undergoing cardiac surgery with cardiopulmonary bypass (CPB) presents a significant challenge for anesthesiologists. Machine Learning (ML)-assisted tools have the potential to enhance the recognition of patients at risk of complications and predict potential issues, ultimately improving outcomes.MethodsWe evaluated the prediction capacity of six models, ranging from logistic regression to support vector machine, using a dataset comprising 33 variables and 1364 subjects. The Area Under the Curve (AUC) and the F1 score served as the primary evaluation metrics. Our primary objectives were twofold: first, to develop an effective prediction model, and second, to create a user-friendly comprehensive model for identifying high-risk patients.ResultsThe logistic regression model demonstrated the highest effectiveness, achieving an AUC of 83.65%, and an F1 score of 0.7296, with balanced sensitivity and specificity of 77.94% and 76.47%, respectively. In comparison, the comprehensive three-layer decision tree model achieved an AUC of 72.84%, with sensitivity (79.41%) comparable to more complex models.ConclusionOur machine learning-assisted tools provide an additional perspective and enhance the predictive capabilities of traditional scoring methods. These tools can assist anesthesiologists in making well-informed decisions. Furthermore, we have successfully demonstrated the feasibility of creating a practical white-box model. The next steps involve conducting clinical validation and multicenter cross-validation.Trial registrationNCT05537168
引用
收藏
页码:747 / 755
页数:9
相关论文
共 30 条
[1]  
Al G., 2019, HANDS ON MACHINE LEA
[2]  
[Anonymous], 2023, R: A language and environment for statistical computing
[3]  
Bengfort B, 2019, J OPEN SOURCE SOFTW, V4, P1075, DOI [10.21105/joss.01075, 10.21105/joss.01075, DOI 10.21105/JOSS.01075, 10.21105/ joss.01075.]
[4]  
Briganti Giovanni, 2022, Psychiatr Danub, V34, P201
[5]   Challenges in Pediatric Cardiac Anesthesia in Developing Countries [J].
Cvetkovic, Mirjana .
FRONTIERS IN PEDIATRICS, 2018, 6
[6]  
Deng Fengyan, 2015, AANA J, V83, P189
[7]   Prediction and management of bleeding in cardiac surgery [J].
Despotis, G. ;
Avidan, M. ;
Eby, C. .
JOURNAL OF THROMBOSIS AND HAEMOSTASIS, 2009, 7 :111-117
[8]  
GaD VR, 2009, PYTHON 3 REFERENCE M
[9]  
Goodfellow I, 2016, ADAPT COMPUT MACH LE, P1
[10]   Array programming with NumPy [J].
Harris, Charles R. ;
Millman, K. Jarrod ;
van der Walt, Stefan J. ;
Gommers, Ralf ;
Virtanen, Pauli ;
Cournapeau, David ;
Wieser, Eric ;
Taylor, Julian ;
Berg, Sebastian ;
Smith, Nathaniel J. ;
Kern, Robert ;
Picus, Matti ;
Hoyer, Stephan ;
van Kerkwijk, Marten H. ;
Brett, Matthew ;
Haldane, Allan ;
del Rio, Jaime Fernandez ;
Wiebe, Mark ;
Peterson, Pearu ;
Gerard-Marchant, Pierre ;
Sheppard, Kevin ;
Reddy, Tyler ;
Weckesser, Warren ;
Abbasi, Hameer ;
Gohlke, Christoph ;
Oliphant, Travis E. .
NATURE, 2020, 585 (7825) :357-362