Literature DB >> 30453455

Machine-learning analysis outperforms conventional statistical models and CT classification systems in predicting 6-month outcomes in pediatric patients sustaining traumatic brain injury.

Andrew T Hale1,2, David P Stonko3, Amber Brown1, Jaims Lim1, David J Voce4, Stephen R Gannon1, Truc M Le5, Chevis N Shannon1,4.   

Abstract

OBJECTIVEModern surgical planning and prognostication requires the most accurate outcomes data to practice evidence-based medicine. For clinicians treating children following traumatic brain injury (TBI) these data are severely lacking. The first aim of this study was to assess published CT classification systems in the authors' pediatric cohort. A pediatric-specific machine-learning algorithm called an artificial neural network (ANN) was then created that robustly outperformed traditional CT classification systems in predicting TBI outcomes in children.METHODSThe clinical records of children under the age of 18 who suffered a TBI and underwent head CT within 24 hours after TBI (n = 565) were retrospectively reviewed.RESULTS"Favorable" outcome (alive with Glasgow Outcome Scale [GOS] score ≥ 4 at 6 months postinjury, n = 533) and "unfavorable" outcome (death at 6 months or GOS score ≤ 3 at 6 months postinjury, n = 32) were used as the primary outcomes. The area under the receiver operating characteristic (ROC) curve (AUC) was used to delineate the strength of each CT grading system in predicting survival (Helsinki, 0.814; Rotterdam, 0.838; and Marshall, 0.781). The AUC for CT score in predicting GOS score ≤ 3, a measure of overall functionality, was similarly predictive (Helsinki, 0.717; Rotterdam, 0.748; and Marshall, 0.663). An ANN was then constructed that was able to predict 6-month outcomes with profound accuracy (AUC = 0.9462 ± 0.0422).CONCLUSIONSThis study showed that machine-learning can be leveraged to more accurately predict TBI outcomes in children.

Entities:  

Keywords:  ANN = artificial neural network; AUC = area under the curve; DI = diffuse injury; EDH = epidural hematoma; GCS = Glasgow Coma Scale; GOS = Glasgow Outcome Scale; ICH = intracranial hemorrhage; IVH = intraventricular hemorrhage; ROC = receiver operating characteristic; SAH = subarachnoid hemorrhage; SDH = subdural hemorrhage; TBI = traumatic brain injury; artificial neural network; neurotrauma; tSAH = traumatic SAH; traumatic brain injury

Mesh:

Year:  2018        PMID: 30453455     DOI: 10.3171/2018.8.FOCUS17773

Source DB:  PubMed          Journal:  Neurosurg Focus        ISSN: 1092-0684            Impact factor:   4.047


  18 in total

1.  Artificial neural networks can predict trauma volume and acuity regardless of center size and geography: A multicenter study.

Authors:  Bradley M Dennis; David P Stonko; Rachael A Callcut; Richard A Sidwell; Nicole A Stassen; Mitchell J Cohen; Bryan A Cotton; Oscar D Guillamondegui
Journal:  J Trauma Acute Care Surg       Date:  2019-07       Impact factor: 3.313

2.  Towards PErsonalised PRognosis for children with traumatic brain injury: the PEPR study protocol.

Authors:  Cece C Kooper; Jaap Oosterlaan; Hilgo Bruining; Marc Engelen; Petra J W Pouwels; Arne Popma; Job B M van Woensel; Dennis R Buis; Marjan E Steenweg; Maayke Hunfeld; Marsh Königs
Journal:  BMJ Open       Date:  2022-06-29       Impact factor: 3.006

3.  A swine model of reproducible timed induction of peripheral arterial shunt failure: Developing warning signs of imminent shunt failure.

Authors:  David P Stonko; Neerav Patel; Joseph Edwards; Hossam Abdou; Eric Lang; Noha N Elansary; Rebecca Treffalls; Joseph White; Jonathan J Morrison
Journal:  JVS Vasc Sci       Date:  2022-08-17

4.  A Machine Learning Approach for Predicting Real-time Risk of Intraoperative Hypotension in Traumatic Brain Injury.

Authors:  Shara I Feld; Daniel S Hippe; Ljubomir Miljacic; Nayak L Polissar; Shu-Fang Newman; Bala G Nair; Monica S Vavilala
Journal:  J Neurosurg Anesthesiol       Date:  2021-11-11       Impact factor: 3.969

5.  The LEukemia Artificial Intelligence Program (LEAP) in chronic myeloid leukemia in chronic phase: A model to improve patient outcomes.

Authors:  Koji Sasaki; Elias J Jabbour; Farhad Ravandi; Marina Konopleva; Gautam Borthakur; William G Wierda; Naval Daver; Koichi Takahashi; Kiran Naqvi; Courtney DiNardo; Guillermo Montalban-Bravo; Rashmi Kanagal-Shamanna; Ghayas Issa; Preetesh Jain; Jeffrey Skinner; Mary B Rios; Sherry Pierce; Kelly A Soltysiak; Junya Sato; Guillermo Garcia-Manero; Jorge E Cortes
Journal:  Am J Hematol       Date:  2020-12-03       Impact factor: 13.265

Review 6.  Clinical Applications of Extracellular Vesicles in the Diagnosis and Treatment of Traumatic Brain Injury.

Authors:  Kryshawna Beard; David F Meaney; David Issadore
Journal:  J Neurotrauma       Date:  2020-06-02       Impact factor: 4.869

7.  Prediction of in-hospital mortality in patients on mechanical ventilation post traumatic brain injury: machine learning approach.

Authors:  Ahmad Abujaber; Adam Fadlalla; Diala Gammoh; Husham Abdelrahman; Monira Mollazehi; Ayman El-Menyar
Journal:  BMC Med Inform Decis Mak       Date:  2020-12-14       Impact factor: 2.796

Review 8.  Contribution of CT-Scan Analysis by Artificial Intelligence to the Clinical Care of TBI Patients.

Authors:  Clément Brossard; Benjamin Lemasson; Arnaud Attyé; Jules-Arnaud de Busschère; Jean-François Payen; Emmanuel L Barbier; Jules Grèze; Pierre Bouzat
Journal:  Front Neurol       Date:  2021-06-10       Impact factor: 4.003

9.  Prediction of in-hospital mortality in patients with post traumatic brain injury using National Trauma Registry and Machine Learning Approach.

Authors:  Ahmad Abujaber; Adam Fadlalla; Diala Gammoh; Husham Abdelrahman; Monira Mollazehi; Ayman El-Menyar
Journal:  Scand J Trauma Resusc Emerg Med       Date:  2020-05-27       Impact factor: 2.953

10.  Admission Levels of Interleukin 10 and Amyloid β 1-40 Improve the Outcome Prediction Performance of the Helsinki Computed Tomography Score in Traumatic Brain Injury.

Authors:  Jussi P Posti; Riikka S K Takala; Rahul Raj; Teemu M Luoto; Leire Azurmendi; Linnéa Lagerstedt; Mehrbod Mohammadian; Iftakher Hossain; Jessica Gill; Janek Frantzén; Mark van Gils; Peter J Hutchinson; Ari J Katila; Pia Koivikko; Henna-Riikka Maanpää; David K Menon; Virginia F Newcombe; Jussi Tallus; Kaj Blennow; Olli Tenovuo; Henrik Zetterberg; Jean-Charles Sanchez
Journal:  Front Neurol       Date:  2020-10-30       Impact factor: 4.003

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