Explainable artificial intelligence for predicting red blood cell transfusion in geriatric patients undergoing hip arthroplasty: Machine learning analysis using national health insurance data.
Hyunyoung SeongKwang-Sig LeeYumin ChoiDonghyun NaJaewoo KimHyeon-Ju ShinKi Hoon AhnPublished in: Medicine (2024)
This study uses machine learning and population data to analyze major determinants of blood transfusion among patients with hip arthroplasty. Retrospective cohort data came from Korea National Health Insurance Service claims data for 19,110 patients aged 65 years or more with hip arthroplasty in 2019. The dependent variable was blood transfusion (yes vs no) in 2019 and its 31 predictors were included. Random forest variable importance and Shapley Additive Explanations were used for identifying major predictors and the directions of their associations with blood transfusion. The random forest registered the area under the curve of 73.6%. Based on random forest variable importance, the top-10 predictors were anemia (0.25), tranexamic acid (0.17), age (0.16), socioeconomic status (0.05), spinal anesthesia (0.05), general anesthesia (0.04), sex (female) (0.04), dementia (0.03), iron (0.02), and congestive heart failure (0.02). These predictors were followed by their top-20 counterparts including cardiovascular disease, statin, chronic obstructive pulmonary disease, diabetes mellitus, chronic kidney disease, peripheral vascular disease, liver disease, solid tumor, myocardial infarction and hypertension. In terms of max Shapley Additive Explanations values, these associations were positive, e.g., anemia (0.09), tranexamic acid (0.07), age (0.09), socioeconomic status (0.05), spinal anesthesia (0.05), general anesthesia (0.04), sex (female) (0.02), dementia (0.03), iron (0.04), and congestive heart failure (0.03). For example, the inclusion of anemia, age, tranexamic acid or spinal anesthesia into the random forest will increase the probability of blood transfusion among patients with hip arthroplasty by 9%, 7%, 9% or 5%. Machine learning is an effective prediction model for blood transfusion among patients with hip arthroplasty. The high-risk group with anemia, age and comorbid conditions need to be treated with tranexamic acid, iron and/or other appropriate interventions.
Keyphrases
- health insurance
- machine learning
- chronic kidney disease
- big data
- artificial intelligence
- end stage renal disease
- iron deficiency
- heart failure
- climate change
- cardiovascular disease
- total hip arthroplasty
- electronic health record
- affordable care act
- chronic obstructive pulmonary disease
- red blood cell
- deep learning
- patients undergoing
- spinal cord
- mild cognitive impairment
- left ventricular
- healthcare
- cognitive impairment
- ejection fraction
- blood pressure
- newly diagnosed
- coronary artery disease
- physical activity
- quality improvement
- mental health
- prognostic factors
- metabolic syndrome
- lung function
- cross sectional
- cystic fibrosis
- spinal cord injury
- adipose tissue
- weight loss