prediction model

预测模型
  • 文章类型: Journal Article
    尽管手术技术有了进步,感染性心内膜炎(IE)的手术死亡率仍然相对较高.这项研究的目的是建立一个列线图模型,以根据术前临床特征预测感染性心内膜炎心脏手术患者的术后早期死亡率。
    我们回顾性分析了2007年1月至2023年6月在我们中心接受手术的357例IE患者的临床资料。使用单变量和多变量逻辑回归模型确定术后早期死亡的独立危险因素。基于这些因素,建立了一个预测模型,并在列线图中呈现。通过受试者工作特性(ROC)曲线评估列线图的性能,校准图,和决策曲线分析(DCA)。利用自举方法执行内部验证。
    列线图包括9个预测因子:年龄,中风,肺栓塞,白蛋白水平,心功能IV级,抗生素使用<4周,植被大小≥1.5厘米,瓣膜周围脓肿和术前透析。模型ROC曲线下面积(AUC)为0.88(95CI:0.80-0.96)。校准图表明列线图具有良好的预测一致性,具有令人满意的Hosmer-Lemeshow测试结果(χ2=13.490,p=0.142)。决策曲线分析表明,与“全部操作”或“无操作”策略相比,列线图模型提供了更大的临床净收益。
    创新的列线图模型为心血管外科医师提供了一种工具来预测IE手术患者术后早期死亡的风险。该模型可为IE患者的术前决策提供有价值的参考,并可提高IE患者的临床结局。
    UNASSIGNED: Despite advancements in surgical techniques, operations for infective endocarditis (IE) remain associated with relatively high mortality. The aim of this study was to develop a nomogram model to predict the early postoperative mortality in patients undergoing cardiac surgery for infective endocarditis based on the preoperative clinical features.
    UNASSIGNED: We retrospectively analyzed the clinical data of 357 patients with IE who underwent surgeries at our center between January 2007 and June 2023. Independent risk factors for early postoperative mortality were identified using univariate and multivariate logistic regression models. Based on these factors, a predictive model was developed and presented in a nomogram. The performance of the nomogram was evaluated through the receiver operating characteristic (ROC) curve, calibration plot, and decision curve analysis (DCA). Internal validation was performed utilizing the bootstrapping method.
    UNASSIGNED: The nomogram included nine predictors: age, stroke, pulmonary embolism, albumin level, cardiac function class IV, antibotic use <4weeks, vegetation size ≥1.5 cm, perivalvular abscess and preoperative dialysis. The area under the ROC curve (AUC) of the model was 0.88 (95%CI:0.80-0.96). The calibration plot indicated strong prediction consistency of the nomogram with satisfactory Hosmer-Lemeshow test results (χ2 = 13.490, p = 0.142). Decision curve analysis indicated that the nomogram model provided greater clinical net benefits compared to \"operate-all\" or \"operate-none\" strategies.
    UNASSIGNED: The innovative nomogram model offers cardiovascular surgeons a tool to predict the risk of early postoperative mortality in patients undergoing IE operations. This model can serve as a valuable reference for preoperative decision-making and can enhance the clinical outcomes of IE patients.
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  • 文章类型: Journal Article
    这项研究旨在开发并内部验证一个列线图模型,以评估接受电视胸腔镜(VATS)肺叶切除术的患者术中低体温的风险。本研究为回顾性研究。选取2022年1月至2023年12月在武汉某三级医院行胸腔镜肺叶切除术的530例患者。根据术中是否发生低体温分为低体温组(n=346)和非低体温组(n=184)。套索回归用于筛选自变量。采用Logistic回归分析术中低体温的危险因素,建立了列线图模型。Bootstrap方法用于内部验证列线图模型。采用受试者工作特征(ROC)曲线评价模型的区分度。使用校准曲线和HosmerLemeshow测试来评估模型的准确性。采用决策曲线分析法(DCA)评价模型的临床实用性。530例VATS肺叶切除术患者中有346例术中低体温(65.28%)。Logistic回归分析显示,年龄,血清总胆红素,吸入地氟醚,麻醉持续时间,术中输液量,术中出血量和体重指数是VATS肺叶切除术患者术中低体温的危险因素(P<0.05)。ROC曲线下面积为0.757,95%CI(0.714-0.799)。最佳截断值为0.635,灵敏度为0.717,特异度为0.658。这些结果表明该模型具有很好的判别性。校准曲线表明,实际值通常与预测值一致。Hosmer-Lemeshow检验显示χ2=5.588,P=0.693,表明该模型具有较好的准确性。DCA结果证实该模型具有较高的临床实用性。本研究中构建的列线图模型显示出良好的区分度,预测术中低体温患者的准确性和临床实用性,为医护人员筛查VATS肺叶切除术患者术中低体温的高危因素提供参考。
    This study aimed to develop and internally validate a nomogram model for assessing the risk of intraoperative hypothermia in patients undergoing video-assisted thoracoscopic (VATS) lobectomy. This study is a retrospective study. A total of 530 patients who undergoing VATS lobectomy from January 2022 to December 2023 in a tertiary hospital in Wuhan were selected. Patients were divided into hypothermia group (n = 346) and non-hypothermia group (n = 184) according to whether hypothermia occurred during the operation. Lasso regression was used to screen the independent variables. Logistic regression was used to analyze the risk factors of hypothermia during operation, and a nomogram model was established. Bootstrap method was used to internally verify the nomogram model. Receiver operating characteristic (ROC) curve was used to evaluate the discrimination of the model. Calibration curve and Hosmer Lemeshow test were used to evaluate the accuracy of the model. Decision curve analysis (DCA) was used to evaluate the clinical utility of the model. Intraoperative hypothermia occurred in 346 of 530 patients undergoing VATS lobectomy (65.28%). Logistic regression analysis showed that age, serum total bilirubin, inhaled desflurane, anesthesia duration, intraoperative infusion volume, intraoperative blood loss and body mass index were risk factors for intraoperative hypothermia in patients undergoing VATS lobectomy (P < 0.05). The area under ROC curve was 0.757, 95% CI (0.714-0.799). The optimal cutoff value was 0.635, the sensitivity was 0.717, and the specificity was 0.658. These results suggested that the model was well discriminated. Calibration curve has shown that the actual values are generally in agreement with the predicted values. Hosmer-Lemeshow test showed that χ2 = 5.588, P = 0.693, indicating that the model has a good accuracy. The DCA results confirmed that the model had high clinical utility. The nomogram model constructed in this study showed good discrimination, accuracy and clinical utility in predicting patients with intraoperative hypothermia, which can provide reference for medical staff to screen high-risk of intraoperative hypothermia in patients undergoing VATS lobectomy.
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  • 文章类型: Journal Article
    目的:全髋关节置换术(THA)仍然是老年股骨颈骨折的主要治疗选择。本研究旨在探讨与术后异体输血相关的危险因素,并建立动态预测模型来预测术后输血需求。这将为围手术期体液管理和医疗资源的合理配置提供更准确的指导。
    方法:我们回顾性分析了2017年1月至2023年8月在三家三甲医院接受全髋关节置换术治疗股骨颈骨折的829例患者的数据。来自一家医院的患者数据用于模型开发,而其他两家医院的数据用于外部验证.采用Logistic回归分析筛选与输血相关的特征亚群。各种机器学习算法,包括逻辑回归,SVA(支持向量机),K-NN(k-最近邻),MLP(多层感知器),天真的贝叶斯,决策树,随机森林,和梯度增强,用于处理数据和构建预测模型。10倍交叉验证算法有助于比较模型的预测性能,从而为开发开源计算程序选择性能最佳的模型。
    结果:BMI(体重指数),手术时间,IBL(术中失血),抗凝病史,氨甲环酸的利用率,Pre-Hb,模型中包括Pre-ALB以及独立危险因素。每个模型的平均曲线下面积(AUC)值如下:逻辑回归(0.98);SVA(0.91);k-NN(0.87)MLP,(0.96);朴素贝叶斯(0.97);决策树(0.87);随机森林(0.96);梯度提升(0.97)。基于最佳模型的Web计算器可在以下网址获得:(https://nomo99。shinyapps.io/dynomapp/)。
    结论:利用计算机算法,建立了判别精度高(AUC>0.5)的预测模型。逻辑回归模型表现出优越的区分度和可靠性,从而成功通过外部验证。该模型的强泛化性和适用性对临床医生有重要意义,帮助识别术后输血高危患者。
    OBJECTIVE: Total hip arthroplasty (THA) remains the primary treatment option for femoral neck fractures in elderly patients. This study aims to explore the risk factors associated with allogeneic blood transfusion after surgery and to develop a dynamic prediction model to predict post-operative blood transfusion requirements. This will provide more accurate guidance for perioperative humoral management and rational allocation of medical resources.
    METHODS: We retrospectively analyzed data from 829 patients who underwent total hip arthroplasty for femoral neck fractures at three third-class hospitals between January 2017 and August 2023. Patient data from one hospital were used for model development, whereas data from the other two hospitals were used for external validation. Logistic regression analysis was used to screen the characteristic subsets related to blood transfusion. Various machine learning algorithms, including logistic regression, SVA (support vector machine), K-NN (k-nearest neighbors), MLP (multilayer perceptron), naive Bayes, decision tree, random forest, and gradient boosting, were used to process the data and construct prediction models. A 10-fold cross-validation algorithm facilitated the comparison of the predictive performance of the models, resulting in the selection of the best-performing model for the development of an open-source computing program.
    RESULTS: BMI (body mass index), surgical duration, IBL (intraoperative blood loss), anticoagulant history, utilization rate of tranexamic acid, Pre-Hb, and Pre-ALB were included in the model as well as independent risk factors. The average area under curve (AUC) values for each model were as follows: logistic regression (0.98); SVA (0.91); k-NN (0.87) MLP, (0.96); naive Bayes (0.97); decision tree (0.87); random forest (0.96); and gradient boosting (0.97). A web calculator based on the best model is available at: (https://nomo99.shinyapps.io/dynnomapp/).
    CONCLUSIONS: Utilizing a computer algorithm, a prediction model with a high discrimination accuracy (AUC > 0.5) was developed. The logistic regression model demonstrated superior differentiation and reliability, thereby successfully passing external validation. The model\'s strong generalizability and applicability have significant implications for clinicians, aiding in the identification of patients at high risk for postoperative blood transfusion.
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  • 文章类型: Journal Article
    胆结石病(GSD)是世界范围内发病率较高的常见消化道疾病之一。GSD对患者的影响包括但不限于恶心症状,呕吐,和GSD直接引起的胆绞痛。此外,越来越多的证据来自队列研究,将GSD与其他疾病联系起来,比如心血管疾病,胆道癌,还有结直肠癌.早期识别GSD高风险患者可能有助于改善疾病的预防和控制。一系列研究试图建立GSD的预测模型,但是由于预测因素不完整,这些模型不能完全应用于普通人群,小样本量,以及外部验证的局限性。设计一个普遍适用的一般人群GSD风险预测模型,采取个体化干预措施预防GSD的发生至关重要。本研究旨在开展一项涉及90000多人的多中心调查,构建并验证一个完整、简化的GSD风险预测模型。
    2015年1月至2020年12月,共有123634名参与者被纳入研究,其中43929人来自重庆医科大学附属第一医院(重庆,中国),11907来自济宁市第一人民医院(山东,中国),1538人来自天津医科大学肿瘤研究所和医院(天津,中国),66260来自开州区人民医院(重庆市,中国)。排除临床医学资料不完整的患者后,将来自重庆医科大学附属第一医院的35976名患者分为训练数据集(n=28781,80%)和验证数据集(n=7195,20%)。采用Logistic回归分析探讨GSD的相关危险因素,构建了完整的风险预测模型。得分高的因素,主要根据完整模型的列线图,被保留以简化模型。在验证数据集中,使用校准曲线验证了这些模型的诊断准确性和临床表现,接收器工作特性曲线的曲线下面积(AUC),和决策曲线分析(DCA)。此外,这两种模型的诊断准确性在另外三家医院得到了验证.最后,我们建立了一个使用预测模型的在线网站(完整的模型可以在https://wenqiyu访问。shinyapps.io/Completemodel/,而简化的模型可以在https://wenqiyu访问。shinyapps.io/简体/)。
    排除临床医疗数据不完整的患者后,最终共有96426名参与者被纳入本研究(35876名来自重庆医科大学附属第一医院,济宁市第一人民医院9289,1522年来自天津医科大学肿瘤研究所,和49639来自开州区人民医院)。女性性别,高龄,较高的体重指数,空腹血糖,尿酸,总胆红素,γ-谷氨酰转肽酶,脂肪肝与GSD风险呈正相关。此外,胆囊息肉,总胆固醇,高密度脂蛋白胆固醇,低密度脂蛋白胆固醇,天冬氨酸转氨酶与GSD风险呈负相关。根据完整模型的列线图,包括性别在内的简化模型,年龄,身体质量指数,胆囊息肉,和脂肪肝的构造。所有校准曲线在预测和观察到的概率之间表现出良好的一致性。此外,DCA表明,完整模型和简化模型均显示出比全部治疗和无治疗更好的净收益。根据校准图,DCA,和完整模型的AUC(内部验证数据集中的AUC=74.1%[95%CI:72.9%-75.3%],山东AUC=71.7%[95%CI:70.6%-72.8%],天津市AUC=75.3%[95%CI:72.7%-77.9%],和开州的AUC=72.9%[95%CI:72.5%-73.3%])和简化模型(内部验证数据集中的AUC=73.7%[95%CI:72.5%-75.0%],山东的AUC=71.5%[95%CI:70.4%-72.5%],天津市AUC=75.4%[95%CI:72.9%-78.0%],开州的AUC=72.4%[95%CI:72.0%-72.8%]),我们得出的结论是,完整和简化的GSD风险预测模型表现出优异的性能。此外,我们检测到两种模型的性能之间没有显着差异(P>0.05)。我们还根据这项研究的结果建立了两个在线网站,用于GSD风险预测。
    这项研究创新性地使用了来自四家医院的96426名患者的数据,以建立GSD风险预测模型,并对四个队列中的内部和外部验证数据集进行风险预测分析。GSD风险预测的简化模型,其中包括性别变量,年龄,身体质量指数,胆囊息肉,脂肪肝疾病,也表现出良好的辨别力和临床表现。尽管如此,低密度脂蛋白胆固醇和天冬氨酸转氨酶在胆囊结石形成中的作用有待进一步研究。完整模型的验证结果在一定程度上优于简化模型,即使在大样本中,差异也不显著。与完整模型相比,简化模型使用的变量较少,产生的预测和临床影响相似.因此,我们建议应用简化模型,以提高实践中筛查高危人群的效率。简化模型的使用有利于提高一般人群的自我防控意识和对GSD的早期干预。
    UNASSIGNED: Gallstone disease (GSD) is one of the common digestive tract diseases with a high worldwide prevalence. The effects of GSD on patients include but are not limited to the symptoms of nausea, vomiting, and biliary colic directly caused by GSD. In addition, there is mounting evidence from cohort studies connecting GSD to other conditions, such as cardiovascular diseases, biliary tract cancer, and colorectal cancer. Early identification of patients at a high risk of GSD may help improve the prevention and control of the disease. A series of studies have attempted to establish prediction models for GSD, but these models could not be fully applied in the general population due to incomplete prediction factors, small sample sizes, and limitations in external validation. It is crucial to design a universally applicable GSD risk prediction model for the general population and to take individualized intervention measures to prevent the occurrence of GSD. This study aims to conduct a multicenter investigation involving more than 90000 people to construct and validate a complete and simplified GSD risk prediction model.
    UNASSIGNED: A total of 123634 participants were included in the study between January 2015 and December 2020, of whom 43929 were from the First Affiliated Hospital of Chongqing Medical University (Chongqing, China), 11907 were from the First People\'s Hospital of Jining City (Shandong, China), 1538 were from the Tianjin Medical University Cancer Institute and Hospital (Tianjin, China), and 66260 were from the People\'s Hospital of Kaizhou District (Chongqing, China). After excluding patients with incomplete clinical medical data, 35976 patients from the First Affiliated Hospital of Chongqing Medical University were divided into a training data set (n=28781, 80%) and a validation data set (n=7195, 20%). Logistic regression analyses were performed to investigate the relevant risk factors of GSD, and a complete risk prediction model was constructed. Factors with high scores, mainly according to the nomograms of the complete model, were retained to simplify the model. In the validation data set, the diagnostic accuracy and clinical performance of these models were validated using the calibration curve, area under the curve (AUC) of the receiver operating characteristic curve, and decision curve analysis (DCA). Moreover, the diagnostic accuracy of these two models was validated in three other hospitals. Finally, we established an online website for using the prediction model (The complete model is accessible at https://wenqianyu.shinyapps.io/Completemodel/, while the simplified model is accessible at https://wenqianyu.shinyapps.io/Simplified/).
    UNASSIGNED: After excluding patients with incomplete clinical medical data, a total of 96426 participants were finally included in this study (35876 from the First Affiliated Hospital of the Chongqing Medical University, 9289 from the First People\'s Hospital of Jining City, 1522 from the Tianjin Medical University Cancer Institute, and 49639 from the People\'s Hospital of Kaizhou District). Female sex, advanced age, higher body mass index, fasting plasma glucose, uric acid, total bilirubin, gamma-glutamyl transpeptidase, and fatty liver disease were positively associated with risks for GSD. Furthermore, gallbladder polyps, total cholesterol, high-density lipoprotein cholesterol, low-density lipoprotein cholesterol, and aspartate aminotransferase were negatively correlated to risks for GSD. According to the nomograms of the complete model, a simplified model including sex, age, body mass index, gallbladder polyps, and fatty liver disease was constructed. All the calibration curves exhibited good consistency between the predicted and observed probabilities. In addition, DCA indicated that both the complete model and the simplified model showed better net benefits than treat-all and treat-none. Based on the calibration plots, DCA, and AUCs of the complete model (AUC in the internal validation data set=74.1% [95% CI: 72.9%-75.3%], AUC in Shandong=71.7% [95% CI: 70.6%-72.8%], AUC in Tianjin=75.3% [95% CI: 72.7%-77.9%], and AUC in Kaizhou=72.9% [95% CI: 72.5%-73.3%]) and the simplified model (AUC in the internal validation data set=73.7% [95% CI: 72.5%-75.0%], AUC in Shandong=71.5% [95% CI: 70.4%-72.5%], AUC in Tianjin=75.4% [95% CI: 72.9%-78.0%], and AUC in Kaizhou=72.4% [95% CI: 72.0%-72.8%]), we concluded that the complete and simplified risk prediction models for GSD exhibited excellent performance. Moreover, we detected no significant differences between the performance of the two models (P>0.05). We also established two online websites based on the results of this study for GSD risk prediction.
    UNASSIGNED: This study innovatively used the data from 96426 patients from four hospitals to establish a GSD risk prediction model and to perform risk prediction analyses of internal and external validation data sets in four cohorts. A simplified model of GSD risk prediction, which included the variables of sex, age, body mass index, gallbladder polyps, and fatty liver disease, also exhibited good discrimination and clinical performance. Nonetheless, further studies are needed to explore the role of low-density lipoprotein cholesterol and aspartate aminotransferase in gallstone formation. Although the validation results of the complete model were better than those of the simplified model to a certain extent, the difference was not significant even in large samples. Compared with the complete model, the simplified model uses fewer variables and yields similar prediction and clinical impact. Hence, we recommend the application of the simplified model to improve the efficiency of screening high-risk groups in practice. The use of the simplified model is conducive to enhancing the self-awareness of prevention and control in the general population and early intervention for GSD.
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  • 文章类型: Journal Article
    背景:延迟联合,malunion,骨不连是骨折愈合的严重并发症。预测手术前后骨不连的风险是具有挑战性的。
    目的:比较临床实践中使用的骨不连最普遍的预测评分,以确定预测骨不连的最准确评分。
    方法:我们收集了2016年1月至2020年12月在三家不同创伤医院接受手术的胫骨干骨折患者的数据。在这项回顾性多中心研究中,我们只考虑用髓内钉治疗骨折。我们计算了胫骨骨折预测愈合天数(FRACTING)评分,不愈合风险判定评分,明确固定时的利兹-热那亚骨不连指数(LEG-NUI)评分。
    结果:在130名患者中,89例(68.4%)在9个月内愈合,并归类为工会。其余患者(n=41,31.5%)在超过9个月后愈合或接受其他外科手术,并被归类为骨不连。计算了三个分数后,LEG-NUI和FRACTING在预测愈合方面最准确。
    结论:LEG-NUI和FRACTING通过准确预测愈合和骨不愈合表现最佳。
    BACKGROUND: Delayed union, malunion, and nonunion are serious complications in the healing of fractures. Predicting the risk of nonunion before or after surgery is challenging.
    OBJECTIVE: To compare the most prevalent predictive scores of nonunion used in clinical practice to determine the most accurate score for predicting nonunion.
    METHODS: We collected data from patients with tibial shaft fractures undergoing surgery from January 2016 to December 2020 in three different trauma hospitals. In this retrospective multicenter study, we considered only fractures treated with intramedullary nailing. We calculated the tibia FRACTure prediction healING days (FRACTING) score, Nonunion Risk Determination score, and Leeds-Genoa Nonunion Index (LEG-NUI) score at the time of definitive fixation.
    RESULTS: Of the 130 patients enrolled, 89 (68.4%) healed within 9 months and were classified as union. The remaining patients (n = 41, 31.5%) healed after more than 9 months or underwent other surgical procedures and were classified as nonunion. After calculation of the three scores, LEG-NUI and FRACTING were the most accurate at predicting healing.
    CONCLUSIONS: LEG-NUI and FRACTING showed the best performances by accurately predicting union and nonunion.
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  • 文章类型: Journal Article
    目的:胰腺癌在其他癌症中具有较高的患病率和死亡率。尽管这种癌症的存活率很低,早期预测本病对降低病死率和改善预后具有重要作用。所以,这项研究。
    方法:在这项回顾性研究中,我们使用654例活着和死亡的PC病例建立了PC的预测模型。选择的六个机器学习算法和预后因素被用来建立预测模型。使用高性能算法的相对重要性评估预测因素的重要性。
    结果:在内部和外部验证模式下,AU-ROC为0.933(95%CI=[0.906-0.958])和AU-ROC为0.836(95%CI=[0.789-0.865]的XG-Boost被认为是预测PC死亡风险的最佳模型。因素,包括肿瘤大小,吸烟,和化疗,被认为是对预测最有影响力的。
    结论:XG-Boost在预测PC患者的死亡风险方面获得了更高的性能效率,因此,这种模式可以促进临床解决方案,医生可以在医疗保健环境中实现,以降低这些患者的死亡风险。
    OBJECTIVE: Pancreatic cancer possesses a high prevalence and mortality rate among other cancers. Despite the low survival rate of this cancer type, the early prediction of this disease has a crucial role in decreasing the mortality rate and improving the prognosis. So, this study.
    METHODS: In this retrospective study, we used 654 alive and dead PC cases to establish the prediction model for PC. The six chosen machine learning algorithms and prognostic factors were utilized to build the prediction models. The importance of the predictive factors was assessed using the relative importance of a high-performing algorithm.
    RESULTS: The XG-Boost with AU-ROC of 0.933 (95% CI= [0.906-0.958]) and AU-ROC of 0.836 (95% CI= [0.789-0.865] in internal and external validation modes were considered as the best-performing model for predicting the mortality risk of PC. The factors, including tumor size, smoking, and chemotherapy, were considered the most influential for prediction.
    CONCLUSIONS: The XG-Boost gained more performance efficiency in predicting the mortality risk of PC patients, so this model can promote the clinical solutions that doctors can achieve in healthcare environments to decrease the mortality risk of these patients.
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  • 文章类型: Journal Article
    目的:早期发现血肿扩大有助于改善患者预后。目前,预测血肿扩大的方法有很多。本研究对多种模型进行比较,寻找适合临床推广的模型。
    方法:收集203例确诊为高血压脑出血患者的非造影头颅CT图像和临床资料。从所有CT图像中提取影像组学特征,并在应用合成少数过抽样方法后将数据集随机分为训练集和验证集(7:3比例)。使用最小绝对收缩和选择操作员(LASSO)回归计算影像组学评分(Radscore),结合选定的临床预测因子,开发一个列线图和四个机器学习(ML)模型:逻辑回归,随机森林,支持向量机,和极端梯度提升(XGBoost)。歧视,评估了列线图和ML模型的校准和临床实用性.
    结果:将列线图和ML模型与Radscore和临床预测因子整合在一起。列线图在具有0.80的AUC的训练集中表现出良好的辨别能力,这在验证集中得到证实(AUC=0.76)。在ML模型中,XGBoost模型获得了最高的AUC(训练集=0.89,验证集=0.85),超过列线图的。XGBoost模型表现出良好的临床有用性。
    结论:基于头颅CT图像的Radscore结合临床预测因子构建的列线图和ML模型均可预测高血压脑出血早期血肿扩大。XGBoost模型具有最高的预测性能和最佳的临床有用性。
    OBJECTIVE: Early identification for hematoma expansion can help improve patient outcomes. Presently, there are many methods to predict hematoma expansion. This study compared a variety of models to find a model suitable for clinical promotion.
    METHODS: Non-contrast head CT images and clinical data were collected from 203 patients diagnosed with hypertensive intracerebral hemorrhage. Radiomics features were extracted from all CT images, and the dataset was randomly divided into training and validation sets (7:3 ratio) after applying the synthetic minority oversampling method. The radiomics score (Radscore) was calculated using least absolute shrinkage and selection operator (LASSO) regression, combined with selected clinical predictors, to develop a nomogram and four machine learning (ML) models: logistic regression, random forest, support vector machine, and extreme gradient boosting (XGBoost). Discrimination, calibration and clinical usefulness of the nomogram and ML models were assessed.
    RESULTS: The nomogram and ML models were integrated with Radscore and clinical predictors. The nomogram demonstrated favorable discriminatory ability in the training set with an AUC of 0.80, which was confirmed in the validation set (AUC=0.76). Among the ML models, the XGBoost model achieved the highest AUC (training set=0.89 and validation set=0.85), surpassing that of the nomogram. The XGBoost model exhibited good clinical usefulness.
    CONCLUSIONS: Both the nomogram and ML models constructed by non-contrast head CT image-based Radscore integrated with clinical predictors can predict early hematoma expansion of hypertensive intracerebral hemorrhage, and the XGBoost model had the highest prediction performance and best clinical usefulness.
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  • 文章类型: Journal Article
    连续肾脏替代治疗(CRRT)已成为危重患者肾脏替代治疗(RRT)的标准方式。然而,关于停止CRRT的标准缺乏共识。在这里,我们验证了多中心回顾性队列中成功停止CRRT的预测模型的有用性。
    一个时间队列和四个外部队列包括1,517例急性肾损伤患者,他们在2018年至2020年接受了CRRT>2天。该模型由四个变量组成:尿量,血尿素氮,血清钾,和平均动脉压。CRRT的成功停止被定义为此后7天没有RRT要求。
    受试者工作特征曲线下面积(AUROC)为0.74(95%置信区间,0.71-0.76)。成功停药的概率约为17%,35%,70%在低分中,中级分数,和高分组,分别。四个队列的模型性能良好(AUROC,0.73-0.75),但在一个队列中较差(AUROC,0.56)。在一个表现不佳的队列中,主治医生主要控制CRRT处方和停药,而在其他四个队列中,肾脏病学家确定了CRRT手术的所有重要步骤,包括CRRT停药的筛查。
    我们的预测模型使用四个简单变量成功停止CRRT的总体性能良好,除了一个肾脏科医师没有积极参与CRRT手术的队列.这些结果表明,需要积极参与肾脏病学家和对CRRT停药的规范化管理。
    UNASSIGNED: Continuous renal replacement therapy (CRRT) has become the standard modality of renal replacement therapy (RRT) in critically ill patients. However, consensus is lacking regarding the criteria for discontinuing CRRT. Here we validated the usefulness of the prediction model for successful discontinuation of CRRT in a multicenter retrospective cohort.
    UNASSIGNED: One temporal cohort and four external cohorts included 1,517 patients with acute kidney injury who underwent CRRT for >2 days in 2018 to 2020. The model was composed of four variables: urine output, blood urea nitrogen, serum potassium, and mean arterial pressure. Successful discontinuation of CRRT was defined as the absence of an RRT requirement for 7 days thereafter.
    UNASSIGNED: The area under the receiver operating characteristic curve (AUROC) was 0.74 (95% confidence interval, 0.71-0.76). The probabilities of successful discontinuation were approximately 17%, 35%, and 70% in the low-score, intermediate-score, and high-score groups, respectively. The model performance was good in four cohorts (AUROC, 0.73-0.75) but poor in one cohort (AUROC, 0.56). In one cohort with poor performance, attending physicians primarily controlled CRRT prescription and discontinuation, while in the other four cohorts, nephrologists determined all important steps in CRRT operation, including screening for CRRT discontinuation.
    UNASSIGNED: The overall performance of our prediction model using four simple variables for successful discontinuation of CRRT was good, except for one cohort where nephrologists did not actively engage in CRRT operation. These results suggest the need for active engagement of nephrologists and protocolized management for CRRT discontinuation.
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  • 文章类型: Journal Article
    进行了可视化实验,以研究液滴在直流电场和剪切流场组合中的电流体动力变形。在不同的电场和剪切流场组合下,在R>S和RS和RS和RS时比纯剪切流低,在R A visualization experiment was conducted to investigate the electrohydrodynamic deformation of droplets in a combined DC electric field and shear flow field. Detailed experimental data on both the transient and steady droplet deformation parameters (D) and orientations (ϕd ) are provided at R > S and R < S (R: conductivity ratio; S: permittivity ratio) under different electric field and shear flow field combinations. The internal flow characteristics of the deformed droplet were also examined via the digital particle image velocimetry (DPIV) method. Due to the competition of the extensional component (EC) and the rotational component (RC) of these two fields on the droplet, the response of ϕd is faster than that of D when an electric field is combined with a shear flow. Additionally, under the competition of the EC and RC at R > S and R < S, the steady-state D and ϕd values exhibit distinct variations. In particular, surface charge convection plays a non-negligible role in enhancing and reducing droplet deformation at R > S and R < S, respectively. In addition, an asymmetric vortex forms inside the deformed droplet in the combined fields, and its velocity is lower under R > S and higher under R < S than in pure shear flow. The available prediction models use the experimental data to predict D, and a modified prediction model is proposed for improving the prediction accuracy of ϕd .
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  • 文章类型: Journal Article
    目的:我们的研究旨在调查血清阴性IgG4相关疾病(IgG4-RD)患者的不同临床模式。
    方法:在本研究中,我们回顾性地纳入了698例未接受治疗的IgG4-RD患者。根据患者的基线血清IgG4水平将患者分为四个不同的亚组。通过比较不同亚组之间的基线临床数据和疾病预后,揭示了血清阴性IgG4-RD患者的不同临床模式。COX回归分析用于研究疾病复发的危险因素并构建列线图模型。
    结果:血清阴性IgG4-RD患者占IgG4-RD患者的少数(49/698,7.02%)。在我们的研究和几个亚洲队列中血清阴性IgG-RD患者的比例显着低于欧洲和美国队列。血清阴性IgG4-RD患者的血清IgG水平较低(p<0.0001),嗜酸性粒细胞计数降低(p<0.0001),降低血清IgE水平(p<0.0001)),较低的IgG4-RD反应指数(RI)得分(p<0.0001),与其他亚组相比,受影响的器官数量较少(p<0.0001),而他们更有可能表现为纤维化类型,有一些特殊的器官受累。发病年龄较小,GC单一疗法,C反应蛋白水平升高,血沉水平升高是血清阴性IgG4-RD患者疾病复发的危险因素。建立了预测血清阴性IgG4-RD患者疾病复发的有效列线图模型。基线评分>84.65的血清阴性IgG4-RD患者易患疾病复发。
    结论:本研究揭示了血清阴性IgG4-RD患者疾病复发的不同临床特征和多种危险因素。建立了一个列线图模型来有效预测随访期间的疾病复发。
    OBJECTIVE: Our study aimed to investigate the distinct clinical patterns of seronegative IgG4-related disease (IgG4-RD) patients.
    METHODS: We retrospectively enrolled 698 treatment-naïve IgG4-RD patients in this study. Patients were divided into four different subgroups according to their baseline serum IgG4 levels. The distinct clinical patterns of seronegative IgG4-RD patients were revealed through the comparison of baseline clinical data and disease prognosis among the different subgroups. COX regression analyses were used to investigate the risk factors for disease relapse and to construct the nomogram model.
    RESULTS: Seronegative IgG4-RD patients account for a minority of IgG4-RD patients (49/698, 7.02%). The proportions of seronegative IgG-RD patients in our study and several Asian cohorts were significantly lower than those of the European and American cohorts. Seronegative IgG4-RD patients got lower serum IgG levels (p < 0.0001), lower eosinophil count (p < 0.0001), lower serum IgE levels (p < 0.0001)), lower IgG4-RD responder index (RI) scores (p < 0.0001), and fewer affected organ numbers (p < 0.0001) compared with other subgroups, whereas they were more likely to manifest fibrotic type with some special organ involvement. Younger age at onset, GCs monotherapy, elevated C-reactive protein level, and elevated erythrocyte sedimentation rate level are the risk factors for the disease relapse of seronegative IgG4-RD patients. An effective nomogram model predicting disease relapse of seronegative IgG4-RD patients was constructed. Seronegative IgG4-RD patients with scores >84.65 at baseline were susceptible to suffering from disease relapse.
    CONCLUSIONS: Distinct clinical features and multiple risk factors for disease relapse of seronegative IgG4-RD patients have been revealed in this study. A nomogram model was constructed to effectively predict disease relapse during the follow-up period.
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