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首页> 外文期刊>Scientific reports. >Longitudinal Patterns in Clinical and Imaging Measurements Predict Residual Survival in Glioblastoma Patients
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Longitudinal Patterns in Clinical and Imaging Measurements Predict Residual Survival in Glioblastoma Patients

机译:临床和影像学测量中的纵向模式可预测胶质母细胞瘤患者的残余存活率

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摘要

The growing amount of longitudinal data for a large population of patients has necessitated the application of algorithms that can discover patterns to inform patient management. This study demonstrates how temporal patterns generated from a combination of clinical and imaging measurements improve residual survival prediction in glioblastoma patients. Temporal patterns were identified with sequential pattern mining using data from 304 patients. Along with patient covariates, the patterns were incorporated as features in logistic regression models to predict 2-, 6-, or 9-month residual survival at each visit. The modeling approach that included temporal patterns achieved test performances of 0.820, 0.785, and 0.783 area under the receiver operating characteristic curve for predicting 2-, 6-, and 9-month residual survival, respectively. This approach significantly outperformed models that used tumor volume alone (p??0.001) or tumor volume combined with patient covariates (p??0.001) in training. Temporal patterns involving an increase in tumor volume above 122?mm3/day, a decrease in KPS across multiple visits, moderate neurologic symptoms, and worsening overall neurologic function suggested lower residual survival. These patterns are readily interpretable and found to be consistent with known prognostic indicators, suggesting they can provide early indicators to clinicians of changes in patient state and inform management decisions.
机译:大量患者的纵向数据数量不断增长,因此必须应用能够发现模式以告知患者管理的算法。这项研究证明了结合临床和影像测量产生的时间模式如何改善胶质母细胞瘤患者的残余生存预测。使用来自304位患者的数据,通过顺序模式挖掘来确定时间模式。与患者协变量一起,将这些模式作为特征纳入逻辑回归模型中,以预测每次访视的2个月,6个月或9个月的残留生存期。包括时间模式在内的建模方法分别在接收器工作特性曲线下实现了0.820、0.785和0.783面积的测试性能,分别用于预测2个月,6个月和9个月的剩余生存期。这种方法明显优于仅在训练中使用肿瘤体积(p <0.001)或将肿瘤体积与患者协变量结合的模型(p <0.001)。涉及肿瘤体积增加超过122?mm3 / day的时间模式,多次就诊时KPS降低,中度神经系统症状以及整体神经系统功能恶化提示残留存活率较低。这些模式很容易解释,并且与已知的预后指标一致,表明它们可以为临床医生提供患者状态变化的早期指标并为管理决策提供依据。

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