Suppr超能文献

与其他机器学习算法相比,朴素贝叶斯是一种可解释且具有预测性的机器学习算法,用于预测骨质疏松性髋部骨折患者的院内死亡率。

Naïve Bayes is an interpretable and predictive machine learning algorithm in predicting osteoporotic hip fracture in-hospital mortality compared to other machine learning algorithms.

作者信息

Wang Jo-Wai Douglas

机构信息

Department of Geriatric Medicine, The Canberra Hospital, ACT Health, Canberra, Australia.

The Australian National University Medical School, Canberra, Australia.

出版信息

PLOS Digit Health. 2025 Jan 2;4(1):e0000529. doi: 10.1371/journal.pdig.0000529. eCollection 2025 Jan.

Abstract

Osteoporotic hip fractures (HFs) in the elderly are a pertinent issue in healthcare, particularly in developed countries such as Australia. Estimating prognosis following admission remains a key challenge. Current predictive tools require numerous patient input features including those unavailable early in admission. Moreover, attempts to explain machine learning [ML]-based predictions are lacking. Seven ML prognostication models were developed to predict in-hospital mortality following minimal trauma HF in those aged ≥ 65 years of age, requiring only sociodemographic and comorbidity data as input. Hyperparameter tuning was performed via fractional factorial design of experiments combined with grid search; models were evaluated with 5-fold cross-validation and area under the receiver operating characteristic curve (AUROC). For explainability, ML models were directly interpreted as well as analysed with SHAP values. Top performing models were random forests, naïve Bayes [NB], extreme gradient boosting, and logistic regression (AUROCs ranging 0.682-0.696, p>0.05). Interpretation of models found the most important features were chronic kidney disease, cardiovascular comorbidities and markers of bone metabolism; NB also offers direct intuitive interpretation. Overall, NB has much potential as an algorithm, due to its simplicity and interpretability whilst maintaining competitive predictive performance.

摘要

老年骨质疏松性髋部骨折(HFs)是医疗保健领域的一个相关问题,在澳大利亚等发达国家尤为如此。入院后估计预后仍然是一个关键挑战。当前的预测工具需要众多患者输入特征,包括入院早期无法获得的特征。此外,缺乏对基于机器学习(ML)的预测进行解释的尝试。开发了七种ML预后模型,以预测年龄≥65岁的轻度创伤性HF患者的院内死亡率,仅需要社会人口统计学和合并症数据作为输入。通过实验的分数因子设计结合网格搜索进行超参数调整;模型通过五折交叉验证和受试者操作特征曲线下面积(AUROC)进行评估。为了实现可解释性,对ML模型进行了直接解释以及使用SHAP值进行分析。表现最佳的模型是随机森林、朴素贝叶斯(NB)、极端梯度提升和逻辑回归(AUROC范围为0.682 - 0.696,p>0.05)。对模型的解释发现,最重要的特征是慢性肾病、心血管合并症和骨代谢标志物;NB还提供直接直观的解释。总体而言,NB作为一种算法具有很大潜力,因为它简单且可解释,同时保持了具有竞争力的预测性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f4fd/11694905/d2952f50168f/pdig.0000529.g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验