Machine Learning for Decision-Support in Acute Abdominal Pain Proof of Concept and Central Considerations

被引:3
|
作者
Henn, Jonas [1 ]
Hatterscheidt, Simon [1 ]
Sahu, Anshupa [2 ,3 ]
Buness, Andreas [2 ,3 ]
Dohmen, Jonas [1 ]
Arensmeyer, Jan [4 ]
Feodorovici, Philipp [4 ]
Sommer, Nils [1 ]
Schmidt, Joachim [4 ,5 ]
Kalff, Joerg C. [1 ]
Matthaei, Hanno [1 ,6 ]
机构
[1] Univ Hosp Bonn, Dept Gen Visceral Thorac & Vasc Surg, Bonn, Germany
[2] Univ Hosp Bonn, Inst Med Biometry Informat & Epidemiol, Bonn, Germany
[3] Univ Hosp Bonn, Inst Genom Stat & Bioinformat, Bonn, Germany
[4] Univ Hosp Bonn, Dept Gen Visceral Thorac & Vasc Surg, Div Thorac Surg, Bonn, Germany
[5] Helios Hosp Bonn Rhein Sieg, Dept Thorac Surg, Bonn, Germany
[6] Univ Hosp Bonn, Dept Gen Visceral Thorac & Vasc Surg, Venusberg Campus 1, D-53127 Bonn, Germany
来源
ZENTRALBLATT FUR CHIRURGIE | 2023年 / 148卷 / 04期
关键词
machine learning; artificial intelligence; acute abdominal pain; clinical decision making; decision support; DIAGNOSIS; PITFALLS;
D O I
10.1055/a-2125-1559
中图分类号
R61 [外科手术学];
学科分类号
摘要
Background Acute abdominal pain is a common presenting symptom in the emergency department and represents heterogeneous causes and diagnoses. There is often a decision to be made regarding emergency surgical care. Machine learning (ML) could be used here as a decision-support and relieve the time and personnel resource shortage. Methods Patients with acute abdominal pain presenting to the Department of Surgery at Bonn University Hospital in 2020 and 2021 were retrospectively analyzed. Clinical parameters as well as laboratory values were used as predictors. After randomly splitting into a training and test data set (ratio 80 to 20), three ML algorithms were comparatively trained and validated. The entire procedure was repeated 20 times. Results A total of 1357 patients were identified and included in the analysis, with one in five (n = 276, 20.3 %) requiring emergency abdominal surgery within 24 hours. Patients operated on were more likely to be male (p = 0.026), older (p = 0.006), had more gastrointestinal symptoms (nausea: p < 0.001, vomiting p < 0.001) as well as a more recent onset of pain (p < 0.001). Tenderness (p < 0.001) and guarding (p < 0.001) were more common in surgically treated patients and blood analyses showed increased inflammation levels (white blood cell count: p < 0.001, CRP: p < 0.001) and onset of organ dysfunction (creatinine: p < 0.014, quick p < 0.001). Of the three trained algorithms, the tree-based methods (h2o random forest and cforest) showed the best performance. The algorithms classified patients, i.e., predicted surgery, with a median AUC ROC of 0.81 and 0.79 and AUC PRC of 0.56 in test sets. Conclusion A proof-of-concept was achieved with the development of an ML model for predicting timely surgical therapy for acute abdomen. The ML algorithm can be a valuable tool in decision-making. Especially in the context of heavily used medical resources, the algorithm can help to use these scarce resources more effectively. Technological progress, especially regarding artificial intelligence, increasingly enables evidence-based approaches in surgery but requires a strictly interdisciplinary approach. In the future, the use and handling of ML should be integrated into surgical training.
引用
收藏
页码:376 / 383
页数:8
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