Technische Universität Dresden, Carl Gustav Carus Faculty of Medicine, Institute for Medical Informatics and Biometry, Dresden, Germany; National Center for Tumor Diseases (NCT), Partner Site Dresden, Core Unit: Data Management and Analytics, Dresden, Germany.
Technische Universität Dresden, Carl Gustav Carus Faculty of Medicine, Institute for Medical Informatics and Biometry, Dresden, Germany.
Exp Hematol. 2021 Feb;94:26-30. doi: 10.1016/j.exphem.2020.11.006. Epub 2020 Nov 24.
Prognostic or therapeutic classification of diseases is often based on clinical or genetic characteristics at diagnosis or response landmarks determined at a certain time point of treatment. On the other hand, there are more and more means, such as molecular markers and sensor data, that allow for quantification of disease or therapeutic parameters over time. Although a general value of time-resolved disease monitoring is widely accepted, the full potential of using the available information on disease and treatment dynamics in the context of outcome prediction or individualized treatment optimization still seems to be, at least partially, overlooked. Within this Perspective, we summarize the conceptual idea of using dynamic information to obtain a better understanding of complex pathophysiological processes within their particular "host environment," which also allows us to intrinsically map patient-specific heterogeneity. Specifically, we discuss to which extent treatment alterations can provide additional information to understand a patient's individual condition and use this information to further adapt the therapeutic strategy. This conceptual discussion is illustrated by using examples from myeloid leukemias to which we recently applied this concept using statistical and mathematical modeling.
疾病的预后或治疗分类通常基于诊断时的临床或遗传特征,或基于治疗某个时间点确定的反应标志物。另一方面,现在有越来越多的方法,如分子标志物和传感器数据,可以随时间定量疾病或治疗参数。尽管人们普遍认为实时疾病监测具有普遍价值,但在预测结果或优化个体化治疗的背景下,充分利用关于疾病和治疗动态的现有信息的潜力似乎仍然或多或少被忽视了。在本观点中,我们总结了使用动态信息来更好地理解复杂病理生理过程及其特定“宿主环境”的概念性想法,这也使我们能够内在地映射患者特异性异质性。具体而言,我们讨论了治疗改变在多大程度上可以提供额外的信息来了解患者的个体状况,并利用这些信息进一步调整治疗策略。我们使用我们最近应用于髓系白血病的统计和数学模型的示例来说明这个概念性讨论。