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通过结合多种机器学习算法开发并验证用于区分脊柱结核和化脓性脊柱炎的诊断模型

Development and validation of a diagnostic model to differentiate spinal tuberculosis from pyogenic spondylitis by combining multiple machine learning algorithms.

作者信息

Huang Chengqian, Zhuo Jing, Liu Chong, Wu Shaofeng, Zhu Jichong, Chen Tianyou, Zhang Bin, Feng Sitan, Zhou Chenxing, Wang Zequn, Huang Shengsheng, Chen Liyi, Zhan Xinli

机构信息

Department of Spine and Osteopathy Ward, The First Affiliated Hospital of Guangxi Medical University, Nanning, China.

Surgical Operation Department, Baise People's Hospital, Affiliated Southwest Hospital of Youjiang Medical University for Nationalities, Baise, China.

出版信息

Biomol Biomed. 2024 Mar 11;24(2):401-410. doi: 10.17305/bb.2023.9663.

Abstract

This study focused on the development and validation of a diagnostic model to differentiate between spinal tuberculosis (STB) and pyogenic spondylitis (PS). We analyzed a total of 387 confirmed cases, out of which 241 were diagnosed with STB and 146 were diagnosed with PS. These cases were randomly divided into a training group (n = 271) and a validation group (n = 116). Within the training group, four machine learning (ML) algorithms (least absolute shrinkage and selection operator [LASSO], logistic regression analysis, random forest, and support vector machine recursive feature elimination [SVM-RFE]) were employed to identify distinctive variables. These specific variables were then utilized to construct a diagnostic model. The model's performance was subsequently assessed using the receiver operating characteristic (ROC) curves and the calibration curves. Finally, internal validation of the model was undertaken in the validation group. Our findings indicate that PS patients had an average platelet-to-neutrophil ratio (PNR) of 277.86, which was significantly higher than the STB patients' average of 69.88. The average age of PS patients was 54.71 years, older than the 48 years recorded for STB patients. Notably, the neutrophil-to-lymphocyte ratio (NLR) was higher in PS patients at 6.15, compared to the 3.46 NLR in STB patients. Additionally, the platelet volume distribution width (PDW) in PS patients was 0.2, compared to 0.15 in STB patients. Conversely, the mean platelet volume (MPV) was lower in PS patients at an average of 4.41, whereas STB patients averaged 8.31. Hemoglobin (HGB) levels were lower in PS patients at an average of 113.31 compared to STB patients' average of 121.64. Furthermore, the average red blood cell (RBC) count was 4.26 in PS patients, which was less than the 4.58 average observed in STB patients. After evaluation, seven key factors were identified using the four ML algorithms, forming the basis of our diagnostic model. The training and validation groups yielded area under the curve (AUC) values of 0.841 and 0.83, respectively. The calibration curves demonstrated a high alignment between the nomogram-predicted values and the actual measurements. The decision curve indicated optimal model performance with a threshold set between 2% and 88%. In conclusion, our model offers healthcare practitioners a reliable tool to efficiently and precisely differentiate between STB and PS, thereby facilitating swift and accurate diagnoses.

摘要

本研究聚焦于开发和验证一种用于区分脊柱结核(STB)和化脓性脊柱炎(PS)的诊断模型。我们共分析了387例确诊病例,其中241例被诊断为STB,146例被诊断为PS。这些病例被随机分为训练组(n = 271)和验证组(n = 116)。在训练组中,采用四种机器学习(ML)算法(最小绝对收缩和选择算子 [LASSO]、逻辑回归分析、随机森林和支持向量机递归特征消除 [SVM - RFE])来识别独特变量。然后利用这些特定变量构建诊断模型。随后使用受试者工作特征(ROC)曲线和校准曲线评估该模型的性能。最后,在验证组中对模型进行内部验证。我们的研究结果表明,PS患者的平均血小板与中性粒细胞比值(PNR)为277.86,显著高于STB患者的平均比值69.88。PS患者的平均年龄为54.71岁,高于STB患者记录的48岁。值得注意的是,PS患者的中性粒细胞与淋巴细胞比值(NLR)为6.15,高于STB患者的NLR 3.46。此外,PS患者的血小板体积分布宽度(PDW)为0.2,而STB患者为0.15。相反,PS患者的平均血小板体积(MPV)较低,平均为4.41,而STB患者平均为8.31。PS患者的血红蛋白(HGB)水平较低,平均为113.31,而STB患者平均为121.64。此外,PS患者的平均红细胞(RBC)计数为4.26,低于STB患者观察到的平均计数4.58。经过评估,使用四种ML算法确定了七个关键因素,构成了我们诊断模型的基础。训练组和验证组的曲线下面积(AUC)值分别为0.841和0.83。校准曲线表明列线图预测值与实际测量值高度吻合。决策曲线表明在阈值设定为2%至88%之间时模型性能最佳。总之,我们的模型为医疗从业者提供了一种可靠的工具,能够高效、准确地区分STB和PS,从而有助于快速、准确地进行诊断。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/371a/10950342/9c64b499f6a2/bb-2023-9663f1.jpg

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