Development of machine learning-based preoperative predictive analytics for unruptured intracranial aneurysm surgery: a pilot study.

Acta neurochirurgica 2020 Vol.162(11) p. 2759-2765

Staartjes VE, Sebök M, Blum PG, Serra C, Germans MR, Krayenbühl N, Regli L, Esposito G

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Abstract

[BACKGROUND] The decision to treat unruptured intracranial aneurysms (UIAs) or not is complex and requires balancing of risk factors and scores. Machine learning (ML) algorithms have previously been effective at generating highly accurate and comprehensive individualized preoperative predictive analytics in transsphenoidal pituitary and open tumor surgery. In this pilot study, we evaluate whether ML-based prediction of clinical endpoints is feasible for microsurgical management of UIAs.

[METHODS] Based on data from a prospective registry, we developed and internally validated ML models to predict neurological outcome at discharge, as well as presence of new neurological deficits and any complication at discharge. Favorable neurological outcome was defined as modified Rankin scale (mRS) 0 to 2. According to the Clavien-Dindo grading (CDG), every adverse event during the post-operative course (surgery and not surgery related) is recorded as a complication. Input variables included age; gender; aneurysm complexity, diameter, location, number, and prior treatment; prior subarachnoid hemorrhage (SAH); presence of anticoagulation, antiplatelet therapy, and hypertension; microsurgical technique and approach; and various unruptured aneurysm scoring systems (PHASES, ELAPSS, UIATS).

[RESULTS] We included 156 patients (26.3% male; mean [SD] age, 51.7 [11.0] years) with UIAs: 37 (24%) of them were treated for multiple aneurysm and 39 (25%) were treated for a complex aneurysm. Poor neurological outcome (mRS ≥ 3) was seen in 12 patients (7.7%) at discharge. New neurological deficits were seen in 10 (6.4%), and any kind of complication occurred in 20 (12.8%) patients. In the internal validation cohort, area under the curve (AUC) and accuracy values of 0.63-0.77 and 0.78-0.91 were observed, respectively.

[CONCLUSIONS] Application of ML enables prediction of early clinical endpoints after microsurgery for UIAs. Our pilot study lays the groundwork for development of an externally validated multicenter clinical prediction model.

추출된 의학 개체 (NER)

유형영어 표현한국어 / 풀이UMLS CUI출처등장
시술 microsurgery 미세수술 dict 1
해부 pituitary scispacy 1
합병증 intracranial aneurysm scispacy 1
합병증 intracranial scispacy 1
합병증 UIAs → unruptured intracranial aneurysms scispacy 1
합병증 aneurysm scispacy 1
약물 [BACKGROUND] scispacy 1
약물 antiplatelet scispacy 1
약물 [11.0] years scispacy 1
약물 [CONCLUSIONS] scispacy 1
질환 unruptured intracranial aneurysm scispacy 1
질환 unruptured intracranial aneurysms scispacy 1
질환 UIAs → unruptured intracranial aneurysms scispacy 1
질환 Machine learning C0376284
Machine Learning
scispacy 1
질환 tumor C0027651
Neoplasms
scispacy 1
질환 neurological deficits C0521654
Neurologic Deficits
scispacy 1
질환 CDG → Clavien-Dindo grading scispacy 1
질환 aneurysm C0002940
Aneurysm
scispacy 1
질환 subarachnoid hemorrhage C0038525
Subarachnoid Hemorrhage
scispacy 1
질환 SAH → subarachnoid hemorrhage C0038525
Subarachnoid Hemorrhage
scispacy 1
질환 hypertension C0020538
Hypertensive disease
scispacy 1
질환 unruptured aneurysm C0162869
Aneurysm, Ruptured
scispacy 1
질환 multiple aneurysm C1265769
Multiple aneurysms
scispacy 1
질환 UIATS scispacy 1
기타 patients scispacy 1

MeSH Terms

Adult; Algorithms; Cohort Studies; Female; Humans; Intracranial Aneurysm; Machine Learning; Male; Microsurgery; Middle Aged; Neurosurgical Procedures; Pilot Projects; Prognosis; Retrospective Studies; Risk Factors; Treatment Outcome

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