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amp;#x201C;Use of computational biology in assessing treatment response and disease progressionamp;#x201D;

机译:“在评估治疗响应和疾病进展时使用计算生物学”

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As advances in technology have spurred innovation and more effective treatments in the field of radiation oncology, so to have increasingly sophisticated tools to understand cancer biology from a therapeutic perspective. It is apparent from nearly a century of treating cancers with ionizing radiation that not all tumors respond similarly to therapy. This heterogeneity of effect leaves malignancies with a spectrum of cure rates. Despite increasing doses of radiation safely delivered to some lesions, there continues to be a failure in controlling growth. Consequently, a greater number of clinicians and scientists have turned to genetics and molecular biology to explain these response differences. With increasing knowledge of the cancer genome, we are beginning to understand why some malignancies are susceptible to radiation and others not. Furthermore, mining of data from tumors versus normal tissue counterparts for mutations, patterns of genomic changes, and other characteristics has allowed us to define new druggable/actionable targets that would sensitize tumors to radiation more efficiently. These new computationally derived data sets will have strong predictive and prognostic value regarding disease states and paradigm shifting treatment outcomes and will help clinicians monitor in advance future needs for therapy adjustments. It is because of the volume of biologic information that is present regarding tumors that the need for computation is an absolute requirement. This talk will provide a synopsis of some of the latest uses of computation in the study of cancer biology and therapy.
机译:随着技术进步刺激了辐射肿瘤学领域的创新和更有效的治疗,因此具有越来越复杂的工具,可以从治疗角度来了解癌症生物学。从近一个世纪的癌症治疗具有电离辐射的癌症是显而易见的,并非所有肿瘤都与治疗类似。这种效果的这种异质性留下了恶性肿瘤,伴有了一种固化率。尽管安全地递送到某些病变的辐射增加,但在控制增长方面仍然存在失败。因此,更多数量的临床医生和科学家转向遗传学和分子生物学来解释这些反应差异。随着癌症基因组的增加,我们开始了解为什么一些恶性肿瘤易受辐射和其他人的影响。此外,从肿瘤与正常组织对应的突变数据的挖掘,基因组的变化等特点的模式允许我们定义会更有效地敏感的肿瘤对放射新的成药/可操作的目标。这些新的计算衍生的数据集将对疾病状态和范式转化处理结果具有强烈的预测性和预后价值,并将有助于临床医生监测治疗调整的需求。这是因为存在关于肿瘤的生物学信息的体积,即计算计算的需要是绝对要求。这次谈话将在癌症生物学和治疗研究中提供一些最新用途的概要。

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