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Computational Models for Predicting Resilience Levels of Women with Breast Cancer

机译:预测乳腺癌妇女的复原力水平的计算模型

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In the current study, a model-based system for predicting resilience in silico, as part of personalizing precision medicine, to better understand the needs for improved therapeutic protocols of each patient is proposed. The computational environment, which is currently under implementation within the BOUNCE EU project ("Predicting Effective Adaptation to Breast Cancer to Help Women to BOUNCE Back"), will help clinicians and care-givers to predict the patient's resilience trajectory throughout cancer continuum. The overall proposed system architecture contributes to clinical outcomes and patient well-being by taking into consideration biological, social, environmental, occupational and lifestyle factors for resilience prediction in women with breast cancer. Supervised, semisupervised and unsupervised learning algorithms are adopted with the inherent ability to represent the time-varying behaviour of the underlying system which allows for a better representation of spatiotemporal input-output dependencies. The in silico resilience prediction approach accommodates numerous diverse factors contributing to multi-scale models of cancer, in order to better specify clinically useful aspects of recovery, treatment and intervention.
机译:在目前的研究中,提出了一种基于模型的系统,用于预测硅中的弹性,作为个性化精密药物的一部分,以更好地理解对每个患者的改善治疗方案的需求。目前在反弹欧盟项目中实施的计算环境(“预测对乳腺癌有效适应妇女反弹的乳腺癌”),将有助于临床医生和护理人员预测患者在癌症连续内的患者的弹性轨迹。通过考虑乳腺癌妇女的综合性预测,整体提出的系统架构有助于临床结果和患者福祉。采用监督,半质化和无监督的学习算法,具有代表底层系统的时变行为的固有能力,其允许更好地表示时空输入输出依赖性。 Silico韧性预测方法在含有多种癌症模型的多种不同因素中,以便更好地指定临床上的恢复,治疗和干预。

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