Predicting neurosurgical referral outcomes in patients with chronic subdural hematomas using machine learning algorithms – A multi-center feasibility study

Author:

Biswas Sayan1,MacArthur Joshua Ian1,Pandit Anand2,McMenemy Lareyna1,Sarkar Ved3,Thompson Helena1,Saleemi Mohammad Saleem4,Chintzewen Julian1,Almansoor Zahra Rose1,Chai Xin Tian1,Hardman Emily1,Torrie Christopher1,Holt Maya1,Hanna Thomas1,Sobieraj Aleksandra1,Toma Ahmed5,George K. Joshi4

Affiliation:

1. Department of Medical Sciences, Faculty of Biology, Medicine and Health, University of Manchester, Manchester, United Kingdom

2. Department of High-Dimensional Neurology, University College London, London, United Kingdom,

3. Department of Computer Information Systems, De Anza College, Cupertino, United States,

4. Department of Neurosurgery, Manchester Centre for Clinical Neurosciences, Salford Royal Hospital, Manchester, United Kingdom,

5. Victor Horsley Department of Neurosurgery, National Hospital for Neurology and Neurosurgery, London, United Kingdom.

Abstract

Background: Chronic subdural hematoma (CSDH) incidence and referral rates to neurosurgery are increasing. Accurate and automated evidence-based referral decision-support tools that can triage referrals are required. Our objective was to explore the feasibility of machine learning (ML) algorithms in predicting the outcome of a CSDH referral made to neurosurgery and to examine their reliability on external validation. Methods: Multicenter retrospective case series conducted from 2015 to 2020, analyzing all CSDH patient referrals at two neurosurgical centers in the United Kingdom. 10 independent predictor variables were analyzed to predict the binary outcome of either accepting (for surgical treatment) or rejecting the CSDH referral with the aim of conservative management. 5 ML algorithms were developed and externally tested to determine the most reliable model for deployment. Results: 1500 referrals in the internal cohort were analyzed, with 70% being rejected referrals. On a holdout set of 450 patients, the artificial neural network demonstrated an accuracy of 96.222% (94.444–97.778), an area under the receiver operating curve (AUC) of 0.951 (0.927–0.973) and a brier score loss of 0.037 (0.022–0.056). On a 1713 external validation patient cohort, the model demonstrated an AUC of 0.896 (0.878–0.912) and an accuracy of 92.294% (90.952–93.520). This model is publicly deployed: https://medmlanalytics.com/neural-analysis-model/. Conclusion: ML models can accurately predict referral outcomes and can potentially be used in clinical practice as CSDH referral decision making support tools. The growing demand in healthcare, combined with increasing digitization of health records raises the opportunity for ML algorithms to be used for decision making in complex clinical scenarios.

Publisher

Scientific Scholar

Subject

Neurology (clinical),Surgery

Reference43 articles.

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2. TensorFlow: A System for Large-scale Machine Learning. Open Access to the Proceedings of the USENIX Symposium on Operating;Abadi,2016

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4. Increasing incidence of chronic subdural haematoma in the elderly;Adhiyaman;QJM,2017

5. Chronic subdural haematoma in the elderly--a North Wales experience;Asghar;J R Soc Med,2002

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