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首页> 外文期刊>Annals of Oncology >To predict or not to predict? The dilemma of predicting the risk of suboptimal cytoreduction in ovarian cancer
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To predict or not to predict? The dilemma of predicting the risk of suboptimal cytoreduction in ovarian cancer

机译:预测还是不预测?预测卵巢癌次优减细胞风险的两难选择

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Although maximal cytoreduction is the cornerstone of current treatment for patients with advanced ovarian cancer, optimal cytoreduction is not always achievable in the clinic. Therefore, using clinical characteristics, diagnostic imaging, serum biomarkers or laparoscopic findings, many studies have attemptesd to find models for predicting surgical resectability. However, most of these prediction models showed limited effectiveness and have not been properly validated. To establish a reliable prediction model, several requirements should be met. First, the goal of surgical cytoreduction should be adequately defined. Second, the desired accuracy for making the model clinically useful should be defined. Third, the model should test all relevant predictors, including clinical, radiological and biochemical predictors, and be developed using a large dataset that provides a sufficient number of events. Fourth, any prediction model should be validated with a relevant external dataset. Lastly, the prediction model should be able to aid decision making and, thereby, improve the outcome of patients. Therefore, randomized clinical trials with decision making based on prediction models are urgently required.
机译:尽管最大程度的细胞减少是当前晚期卵巢癌患者治疗的基石,但临床上并非总是能够达到最佳的细胞减少。因此,利用临床特征,诊断成像,血清生物标志物或腹腔镜检查结果,许多研究试图找到预测手术可切除性的模型。但是,大多数这些预测模型显示出有限的有效性,并且没有得到正确的验证。要建立可靠的预测模型,应满足几个要求。首先,应充分确定手术细胞减少的目标。其次,应该定义使模型在临床上有用的期望精度。第三,模型应测试所有相关的预测因素,包括临床,放射和生化预测因素,并使用提供足够事件数量的大型数据集进行开发。第四,任何预测模型都应使用相关的外部数据集进行验证。最后,预测模型应该能够帮助决策,从而改善患者的预后。因此,迫切需要基于预测模型进行决策的随机临床试验。

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  • 来源
    《Annals of Oncology 》 |2011年第8期| p.23-28| 共6页
  • 作者

    S.-Y. Park;

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