Literature DB >> 30239321

Machine learning ensemble models predict total charges and drivers of cost for transsphenoidal surgery for pituitary tumor.

Whitney E Muhlestein1, Dallin S Akagi2, Amy R McManus1, Lola B Chambless1.   

Abstract

OBJECTIVE: Efficient allocation of resources in the healthcare system enables providers to care for more and needier patients. Identifying drivers of total charges for transsphenoidal surgery (TSS) for pituitary tumors, which are poorly understood, represents an opportunity for neurosurgeons to reduce waste and provide higher-quality care for their patients. In this study the authors used a large, national database to build machine learning (ML) ensembles that directly predict total charges in this patient population. They then interrogated the ensembles to identify variables that predict high charges.
METHODS: The authors created a training data set of 15,487 patients who underwent TSS between 2002 and 2011 and were registered in the National Inpatient Sample. Thirty-two ML algorithms were trained to predict total charges from 71 collected variables, and the most predictive algorithms combined to form an ensemble model. The model was internally and externally validated to demonstrate generalizability. Permutation importance and partial dependence analyses were performed to identify the strongest drivers of total charges. Given the overwhelming influence of length of stay (LOS), a second ensemble excluding LOS as a predictor was built to identify additional drivers of total charges.
RESULTS: An ensemble model comprising 3 gradient boosted tree classifiers best predicted total charges (root mean square logarithmic error = 0.446; 95% CI 0.439-0.453; holdout = 0.455). LOS was by far the strongest predictor of total charges, increasing total predicted charges by approximately $5000 per day.In the absence of LOS, the strongest predictors of total charges were admission type, hospital region, race, any postoperative complication, and hospital ownership type.
CONCLUSIONS: ML ensembles predict total charges for TSS with good fidelity. The authors identified extended LOS, nonelective admission type, non-Southern hospital region, minority race, postoperative complication, and private investor hospital ownership as drivers of total charges and potential targets for cost-lowering interventions.

Entities:  

Keywords:  LOS = length of stay; ML = machine learning; NIS = National (Nationwide) Inpatient Sample; RMSLE = root mean square logarithmic error; TSS = transsphenoidal surgery; machine learning; outcomes modeling; pituitary surgery; total charges; transsphenoidal surgery

Mesh:

Year:  2018        PMID: 30239321     DOI: 10.3171/2018.4.JNS18306

Source DB:  PubMed          Journal:  J Neurosurg        ISSN: 0022-3085            Impact factor:   5.115


  5 in total

Review 1.  Machine Learning for the Detection and Segmentation of Benign Tumors of the Central Nervous System: A Systematic Review.

Authors:  Paul Windisch; Carole Koechli; Susanne Rogers; Christina Schröder; Robert Förster; Daniel R Zwahlen; Stephan Bodis
Journal:  Cancers (Basel)       Date:  2022-05-27       Impact factor: 6.575

Review 2.  Efficacy of transsphenoidal surgery for pituitary tumor: A protocol for systematic review.

Authors:  Wei-Feng Wang; Lin-Hong Yang; Lin Han; Ming-Jun Li; Jian-Qi Xiao
Journal:  Medicine (Baltimore)       Date:  2019-02       Impact factor: 1.817

Review 3.  The Application of Artificial Intelligence and Machine Learning in Pituitary Adenomas.

Authors:  Congxin Dai; Bowen Sun; Renzhi Wang; Jun Kang
Journal:  Front Oncol       Date:  2021-12-23       Impact factor: 6.244

4.  Machine learning models predict total charges and drivers of cost for transcatheter aortic valve replacement.

Authors:  Agam Bansal; Chandan Garg; Essa Hariri; Nicholas Kassis; Amgad Mentias; Amar Krishnaswamy; Samir R Kapadia
Journal:  Cardiovasc Diagn Ther       Date:  2022-08

5.  Novel machine learning models to predict pneumonia events in supratentorial intracerebral hemorrhage populations: An analysis of the Risa-MIS-ICH study.

Authors:  Yan Zheng; Yuan-Xiang Lin; Qiu He; Ling-Yun Zhuo; Wei Huang; Zhu-Yu Gao; Ren-Long Chen; Ming-Pei Zhao; Ze-Feng Xie; Ke Ma; Wen-Hua Fang; Deng-Liang Wang; Jian-Cai Chen; De-Zhi Kang; Fu-Xin Lin
Journal:  Front Neurol       Date:  2022-08-25       Impact factor: 4.086

  5 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.