Machine learning-based dynamic mortality prediction after traumatic brain injury

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作者
Rahul Raj
Teemu Luostarinen
Eetu Pursiainen
Jussi P. Posti
Riikka S. K. Takala
Stepani Bendel
Teijo Konttila
Miikka Korja
机构
[1] Department of Neurosurgery,
[2] Helsinki University Hospital and University of Helsinki,undefined
[3] Division of Anesthesiology,undefined
[4] Department of Anesthesiology,undefined
[5] Intensive Care and Pain Medicine,undefined
[6] Helsinki University Hospital and University of Helsinki,undefined
[7] Data Scientist,undefined
[8] Analytics and AI Development Services,undefined
[9] HUS IT Management,undefined
[10] Helsinki University Hospital,undefined
[11] Division of Clinical Neurosciences,undefined
[12] Department of Neurosurgery,undefined
[13] and Turku Brain Injury Centre,undefined
[14] Turku University Hospital and University of Turku,undefined
[15] Perioperative Services,undefined
[16] Intensive Care Medicine and Pain Management,undefined
[17] Turku University Hospital and University of Turku,undefined
[18] Division of Intensive Care,undefined
[19] Department of Anesthesiology,undefined
[20] Intensive Care and Pain Medicine,undefined
[21] Kuopio University Hospital,undefined
来源
Scientific Reports | / 9卷
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摘要
Our aim was to create simple and largely scalable machine learning-based algorithms that could predict mortality in a real-time fashion during intensive care after traumatic brain injury. We performed an observational multicenter study including adult TBI patients that were monitored for intracranial pressure (ICP) for at least 24 h in three ICUs. We used machine learning-based logistic regression modeling to create two algorithms (based on ICP, mean arterial pressure [MAP], cerebral perfusion pressure [CPP] and Glasgow Coma Scale [GCS]) to predict 30-day mortality. We used a stratified cross-validation technique for internal validation. Of 472 included patients, 92 patients (19%) died within 30 days. Following cross-validation, the ICP-MAP-CPP algorithm’s area under the receiver operating characteristic curve (AUC) increased from 0.67 (95% confidence interval [CI] 0.60–0.74) on day 1 to 0.81 (95% CI 0.75–0.87) on day 5. The ICP-MAP-CPP-GCS algorithm’s AUC increased from 0.72 (95% CI 0.64–0.78) on day 1 to 0.84 (95% CI 0.78–0.90) on day 5. Algorithm misclassification was seen among patients undergoing decompressive craniectomy. In conclusion, we present a new concept of dynamic prognostication for patients with TBI treated in the ICU. Our simple algorithms, based on only three and four main variables, discriminated between survivors and non-survivors with accuracies up to 81% and 84%. These open-sourced simple algorithms can likely be further developed, also in low and middle-income countries.
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