Post-Operative Outcome Predictions in Vestibular Schwannoma Using Machine Learning Algorithms.

IF 3 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES
Abigail Dichter, Khushi Bhatt, Mohan Liu, Timothy Park, Hamid R Djalilian, Mehdi Abouzari
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Abstract

Background/Objectives: This study aimed to develop a machine learning (ML) algorithm that can predict unplanned reoperations and surgical/medical complications after vestibular schwannoma (VS) surgery. Methods: All pre- and peri-operative variables available in the American College of Surgeons National Surgical Quality Improvement Program (ACS-NSQIP) database (n = 110), except those directly related to our outcome variables, were used as input variables. A deep neural network model consisting of seven layers was developed using the Keras open-source library, with a 70:30 breakdown for training and testing. The feature importance of input variables was measured to elucidate their relative permutation effect in the ML model. Results: Of the 1783 patients with VS undergoing surgery, unplanned reoperation, surgical complications, and medical complications were seen in 8.5%, 5.2%, and 6.2% of patients, respectively. The deep neural network model had area under the curve of receiver operating characteristics (ROC-AUC) of 0.6315 (reoperation), 0.7939 (medical complications), and 0.719 (surgical complications). Accuracy, specificity, and negative predictive values of the model for all outcome variables ranged from 82.1 to 96.6%, while positive predictive values and sensitivity ranged from 16.7 to 51.5%. Variables such as the length of stay post-operation until discharge, days from operation to discharge, and the total hospital length of stay had the highest permutation importance. Conclusions: We developed an effective ML algorithm predicting unplanned reoperation and surgical/medical complications post-VS surgery. This may offer physicians guidance into potential post-surgical outcomes to allow for personalized medical care plans for VS patients.

利用机器学习算法预测前庭神经鞘瘤术后预后。
背景/目的:本研究旨在开发一种机器学习(ML)算法,用于预测前庭神经鞘瘤(VS)手术后的意外再手术和手术/医疗并发症。方法:采用美国外科医师学会国家手术质量改进计划(ACS-NSQIP)数据库(n = 110)中所有术前和围手术期变量,除与结果变量直接相关的变量外,均作为输入变量。使用Keras开源库开发了一个由七层组成的深度神经网络模型,训练和测试的分解比例为70:30。通过测量输入变量的特征重要性来阐明它们在ML模型中的相对排列效应。结果:在1783例接受手术治疗的VS患者中,意外再手术、手术并发症和内科并发症分别占8.5%、5.2%和6.2%。深度神经网络模型的受者操作特征曲线下面积(ROC-AUC)分别为0.6315(再手术)、0.7939(内科并发症)和0.719(手术并发症)。该模型对所有结果变量的准确性、特异性和阴性预测值为82.1 ~ 96.6%,阳性预测值和敏感性为16.7 ~ 51.5%。术后至出院的住院时间、从手术到出院的天数以及总住院时间等变量具有最高的排列重要性。结论:我们开发了一种有效的ML算法,可以预测vs手术后的意外再手术和外科/内科并发症。这可能为医生提供指导,了解潜在的术后结果,以便为VS患者制定个性化的医疗保健计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Personalized Medicine
Journal of Personalized Medicine Medicine-Medicine (miscellaneous)
CiteScore
4.10
自引率
0.00%
发文量
1878
审稿时长
11 weeks
期刊介绍: Journal of Personalized Medicine (JPM; ISSN 2075-4426) is an international, open access journal aimed at bringing all aspects of personalized medicine to one platform. JPM publishes cutting edge, innovative preclinical and translational scientific research and technologies related to personalized medicine (e.g., pharmacogenomics/proteomics, systems biology). JPM recognizes that personalized medicine—the assessment of genetic, environmental and host factors that cause variability of individuals—is a challenging, transdisciplinary topic that requires discussions from a range of experts. For a comprehensive perspective of personalized medicine, JPM aims to integrate expertise from the molecular and translational sciences, therapeutics and diagnostics, as well as discussions of regulatory, social, ethical and policy aspects. We provide a forum to bring together academic and clinical researchers, biotechnology, diagnostic and pharmaceutical companies, health professionals, regulatory and ethical experts, and government and regulatory authorities.
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