Literature DB >> 30453460

A machine learning approach to predict early outcomes after pituitary adenoma surgery.

Todd C Hollon1, Adish Parikh2, Balaji Pandian2, Jamaal Tarpeh2, Daniel A Orringer1, Ariel L Barkan1,3, Erin L McKean1,4, Stephen E Sullivan1.   

Abstract

OBJECTIVEPituitary adenomas occur in a heterogeneous patient population with diverse perioperative risk factors, endocrinopathies, and other tumor-related comorbidities. This heterogeneity makes predicting postoperative outcomes challenging when using traditional scoring systems. Modern machine learning algorithms can automatically identify the most predictive risk factors and learn complex risk-factor interactions using training data to build a robust predictive model that can generalize to new patient cohorts. The authors sought to build a predictive model using supervised machine learning to accurately predict early outcomes of pituitary adenoma surgery.METHODSA retrospective cohort of 400 consecutive pituitary adenoma patients was used. Patient variables/predictive features were limited to common patient characteristics to improve model implementation. Univariate and multivariate odds ratio analysis was performed to identify individual risk factors for common postoperative complications and to compare risk factors with model predictors. The study population was split into 300 training/validation patients and 100 testing patients to train and evaluate four machine learning models using binary classification accuracy for predicting early outcomes.RESULTSThe study included a total of 400 patients. The mean ± SD patient age was 53.9 ± 16.3 years, 59.8% of patients had nonfunctioning adenomas and 84.7% had macroadenomas, and the mean body mass index (BMI) was 32.6 ± 7.8 (58.0% obesity rate). Multivariate odds ratio analysis demonstrated that age < 40 years was associated with a 2.86 greater odds of postoperative diabetes insipidus and that nonobese patients (BMI < 30) were 2.2 times more likely to develop postoperative hyponatremia. Using broad criteria for a poor early postoperative outcome-major medical and early surgical complications, extended length of stay, emergency department admission, inpatient readmission, and death-31.0% of patients met criteria for a poor early outcome. After model training, a logistic regression model with elastic net (LR-EN) regularization best predicted early postoperative outcomes of pituitary adenoma surgery on the 100-patient testing set-sensitivity 68.0%, specificity 93.3%, overall accuracy 87.0%. The receiver operating characteristic and precision-recall curves for the LR-EN model had areas under the curve of 82.7 and 69.5, respectively. The most important predictive variables were lowest perioperative sodium, age, BMI, highest perioperative sodium, and Cushing's disease.CONCLUSIONSEarly postoperative outcomes of pituitary adenoma surgery can be predicted with 87% accuracy using a machine learning approach. These results provide insight into how predictive modeling using machine learning can be used to improve the perioperative management of pituitary adenoma patients.

Entities:  

Keywords:  AUC = area under the curve; BMI = body mass index; DVT = deep vein thrombosis; LR-EN = logistic regression with elastic net; PE = pulmonary embolism; PR = precision recall; ROC = receiver operating characteristic; machine learning; obesity; outcome prediction; pituitary adenoma; predictive modeling; risk stratification

Mesh:

Year:  2018        PMID: 30453460     DOI: 10.3171/2018.8.FOCUS18268

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


  10 in total

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2.  Development and assessment of machine learning algorithms for predicting remission after transsphenoidal surgery among patients with acromegaly.

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4.  Prediction of high proliferative index in pituitary macroadenomas using MRI-based radiomics and machine learning.

Authors:  Lorenzo Ugga; Renato Cuocolo; Domenico Solari; Elia Guadagno; Alessandra D'Amico; Teresa Somma; Paolo Cappabianca; Maria Laura Del Basso de Caro; Luigi Maria Cavallo; Arturo Brunetti
Journal:  Neuroradiology       Date:  2019-08-02       Impact factor: 2.804

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6.  Incidence and Factors Associated with Postoperative Delayed Hyponatremia after Transsphenoidal Pituitary Surgery: A Meta-Analysis and Systematic Review.

Authors:  Cheng-Chi Lee; Yu-Chi Wang; Yu-Tse Liu; Yin-Cheng Huang; Peng-Wei Hsu; Kuo-Chen Wei; Ko-Ting Chen; Ya-Jui Lin; Chi-Cheng Chuang
Journal:  Int J Endocrinol       Date:  2021-04-10       Impact factor: 3.257

Review 7.  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

8.  Predictors of Maternal Death Among Women With Pulmonary Hypertension in China From 2012 to 2020: A Retrospective Single-Center Study.

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Journal:  Front Cardiovasc Med       Date:  2022-04-18

9.  Predictors of improvement in quality of life at 12-month follow-up in patients undergoing anterior endoscopic skull base surgery.

Authors:  Quinlan D Buchlak; Nazanin Esmaili; Christine Bennett; Yi Yuen Wang; James King; Tony Goldschlager
Journal:  PLoS One       Date:  2022-07-27       Impact factor: 3.752

Review 10.  Application of Artificial Intelligence in Diagnosis of Craniopharyngioma.

Authors:  Caijie Qin; Wenxing Hu; Xinsheng Wang; Xibo Ma
Journal:  Front Neurol       Date:  2022-01-06       Impact factor: 4.003

  10 in total

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