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Development and Validation of a Prediction Model of Overall Survival in High-Risk Neuroblastoma Using Mechanistic Modeling of Metastasis

机译:使用转移的机械建模的高危神经母细胞瘤的总体生存预测模型的开发和验证

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Prognosis of high-risk neuroblastoma (HRNB) remains poor despite multimodal therapies. Better prediction of survival could help to refine patient stratification and better tailor treatments. We established a mechanistic model of metastasis in HRNB relying on two processes: growth and dissemination relying on two patient-specific parameters: the dissemination rate mu and the minimal visible lesion size S_(vis). This model was calibrated using diagnosis values of primary tumor size, lactate dehydrogenase circulating levels, and the meta-iodobenzylguanidine International Society for Paediatric Oncology European (SIOPEN) score from nuclear imaging, using data from 49 metastatic patients. It was able to describe the data of total tumor mass (lactate dehydrogenase, R2 > 0.99) and number of visible metastases (SIOPEN, R2 = 0.96). A prediction model of overall survival (OS) was then developed using Cox regression. Clinical variables alone were not able to generate a model with sufficient OS prognosis ability (P = .507). The parameter mu was found to be independent of the clinical variables and positively associated with OS (P= .0739 in multivariable analysis). Critically, addition of this computational biomarker significantly improved prediction of OS with a concordance index increasing from 0.675 (95% Cl, 0.663 to 0.688) to 0.733 (95% Cl, 0.722 to 0.744, P < .0001), resulting in significant OS prognosis ability (P= .0422).
机译:尽管多模式疗法,高危神经母细胞瘤(HRNB)的预后仍然很差。更好地预测生存可以有助于完善患者分层和更好的裁缝治疗。我们在HRNB中建立了一个依赖两个过程的转移的机械模型:依靠两个患者特异性参数的生长和传播:传播率MU和最小的可见病变大小S_(VIS)。使用原发性肿瘤大小,乳酸脱氢酶循环水平以及核成像的元碘苯甲酰鸟氨酸国际学会(SIOPEN)评分,使用来自核成像的元二苯甲烷基瓜烷循环水平以及使用来自49位转移性患者的数据进行校准。它能够描述总肿瘤质量(乳酸脱氢酶,R2> 0.99)和可见转移酶数(Siopen,R2 = 0.96)的数据。然后使用COX回归开发了总体生存(OS)的预测模型。仅临床变量就无法生成具有足够的OS预后能力的模型(P = .507)。发现参数MU与临床变量无关,并且与OS呈正相关(多变量分析中的P = .0739)。至关重要的是,该计算生物标志物的添加显着改善了OS的预测,一致性指数从0.675(95%Cl,0.663,0.663至0.688)增加到0.733(95%Cl,0.722,0.722至0.744,p <.0001),导致了重要的OS预后。能力(p = .0422)。

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