...
首页> 外文期刊>Neurosurgical focus >Machine learning–based prediction of outcomes of the endoscopic endonasal approach in Cushing disease: is the future coming?
【24h】

Machine learning–based prediction of outcomes of the endoscopic endonasal approach in Cushing disease: is the future coming?

机译:基于机器学习的缓冲疾病内窥镜型内外方法结果的预测:是未来的来?

获取原文
           

摘要

OBJECTIVE Machine learning (ML) is an innovative method to analyze large and complex data sets. The aim of this study was to evaluate the use of ML to identify predictors of early postsurgical and long-term outcomes in patients treated for Cushing disease (CD). METHODS All consecutive patients in our center who underwent surgery for CD through the endoscopic endonasal approach were retrospectively reviewed. Study endpoints were gross-tumor removal (GTR), postsurgical remission, and long-term control of disease. Several demographic, radiological, and histological factors were assessed as potential predictors. For ML-based modeling, data were randomly divided into 2 sets with an 80% to 20% ratio for bootstrapped training and testing, respectively. Several algorithms were tested and tuned for the area under the curve (AUC). RESULTS The study included 151 patients. GTR was achieved in 137 patients (91%), and postsurgical hypersecretion remission was achieved in 133 patients (88%). At last follow-up, 116 patients (77%) were still in remission after surgery and in 21 patients (14%), CD was controlled with complementary treatment (overall, of 131 cases, 87% were under control at follow-up). At internal validation, the endpoints were predicted with AUCs of 0.81–1.00, accuracy of 81%–100%, and Brier scores of 0.035–0.151. Tumor size and invasiveness and histological confirmation of adrenocorticotropic hormone (ACTH)–secreting cells were the main predictors for the 3 endpoints of interest. CONCLUSIONS ML algorithms were used to train and internally validate robust models for all the endpoints, giving accurate outcome predictions in CD cases. This analytical method seems promising for potentially improving future patient care and counseling; however, careful clinical interpretation of the results remains necessary before any clinical adoption of ML. Moreover, further studies and increased sample sizes are definitely required before the widespread adoption of ML to the study of CD.
机译:客观机器学习(ML)是一种分析大型和复杂数据集的创新方法。本研究的目的是评估ML的使用,以鉴定用于缓冲疾病(CD)治疗的患者的早期后期和长期结果的预测因子。方法通过内窥镜内蒙纳透视方法接受CD手术的中心所有连续患者进行回顾性审查。研究终点是肿瘤肿瘤的去除(GTR),后勤缓解和疾病的长期控制。评估了几种人口统计学,放射性和组织学因子作为潜在的预测因子。对于基于ML的建模,数据随机分为2组,分别具有80%至20%的引导训练和测试的比率。测试并调谐曲线下的区域(AUC)的若干算法。结果该研究包括151名患者。 GTR在137名患者(91%)中实现,并在133名患者(88%)中实现了后勤过度缓解。在最后一次随访中,116名患者(77%)仍在缓解手术后,在21例患者(14%)中,CD被互补治疗(总体而言,131例,87%在随访时受到控制) 。在内部验证时,终点以0.81-1.00,精度为81%-100%,精英分数为0.035-0.151。肾上腺皮质激素(ACTH) - 分泌细胞的肿瘤大小和侵袭性和组织学确认是3个终点的主要预测因子。结论ML算法用于培训和内部验证所有终点的鲁棒模型,在CD案件中提供准确的结果预测。这种分析方法似乎有望潜在地改善未来的患者护理和咨询;然而,在任何临床采用之前,仔细解释结果仍然是必要的。此外,在对CD的研究中普遍采用之前,肯定需要进一步的研究和增加的样品尺寸。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号