Williams C, Brunskill S, Altman D, Briggs A, Campbell H, Clarke M, Glanville J, Gray A, Harris A, Johnston K, Lodge M
Bristol Haematology and Oncology Centre, UK.
Health Technol Assess. 2006 Sep;10(34):iii-iv, ix-xi, 1-204. doi: 10.3310/hta10340.
To investigate the cost-effectiveness of using prognostic information to identify patients with breast cancer who should receive adjuvant therapy.
Electronic databases from 1980 through to February 2002. A survey of clinical practice in UK cancer centres and units. Large retrospective dataset containing data on prognostic factors, treatments and outcomes for women with early breast cancer treated in Oxford.
Between six and nine databases were searched by an information expert. Evidence-based methods were used to review and select those studies and the quality of each included paper was assessed using standard assessment tools reported in the literature or piloted and developed for this study. A survey of clinical practice in UK cancer centres and units was carried out to ensure that conclusions drawn from the report could be implemented. These data, along with the information gathered in the systematic reviews, informed the methodological approach adopted for the health economic modelling. An illustrative framework was developed for incorporating patient-level prediction within a health economic decision model. This framework was applied to a large retrospective dataset containing data on prognostic factors, treatments and outcomes for women with early breast cancer treated in Oxford. The data were used to estimate directly a parametric regression-based risk equation, from which a prognostic index was developed, and prognosis-specific estimates of the baseline breast cancer hazard could be observed. Published estimates of treatment effects, health service treatment costs and utilities were used to construct a decision analytic framework around this risk equation, thus enabling simulation of the effectiveness and cost-effectiveness of adjuvant therapy for all possible combinations of prognostic factors included in the model.
The lack of good-quality systematic reviews and well-conducted studies of prognostic factors in breast cancer is a striking finding. There are no registers of studies of prognostic factors or of reviews of prognostic studies. Many of the reviews used weak methods, primary studies are similar with poor methodology and reporting of results. In addition, there is much variation in patient populations, assay methods, analysis of results, definitions used and reporting of results. Most studies appear to be retrospective and some use inappropriate methods likely to inflate outcomes such as optimising cut points and failing to test the results in an independent population. Very few reviews used meta-analysis to conduct a pooled analysis and to provide an estimate of the average size of any association. Instead, most reviews relied on vote counting. Although many prognostic models for breast cancer have been published, remarkably few have been re-examined by independent groups in independent settings. The few validation studies have been carried out on ill-defined samples, sometimes of smaller size and short follow-up, and sometimes using different patient outcomes when validating a model. The evidence from the validation studies shows support for the prognostic value of the Nottingham Prognostic Index (NPI). No new prognostic factors have been shown to add substantially to those identified in the 1980s. Improvement of this index depends on finding factors that are as important as, but independent of, lymph node, stage and pathological grade. The NPI remains a useful clinical tool, although additional factors may enhance its use. We accepted that hormone receptor status (ER) for hormonal therapy such as tamoxifen and prediction of response to trastuzumab by HER2 did not require systematic review, as the mechanism of action of these drugs requires intact receptors. There was no clear evidence that other factors were useful predictors of response and survival. The survey confirmed pathological nodal status, tumour grade, tumour size and ER status as the most clinically important factors for consideration when selecting women with early breast cancer for adjuvant systemic therapy in the UK. The protocols revealed that although UK cancer centres appear to be using the same prognostic and predictive factors when selecting women to receive adjuvant therapy, much variation in clinical practice exists. Some centres use protocols based upon the NPI whereas others do not use a single index score. Within NPI and non-NPI users, between-centre variability exists in guidelines for women for whom the benefits are uncertain. Consensus amongst units appears to be greatest when selecting women for adjuvant hormone therapy with the decision based primarily upon ER or progesterone receptor status rather than combinations of a number of factors. Guidelines as to who should receive adjuvant chemotherapy, however, were found to be much less uniform. Searches of the literature revealed only five published papers that had previously examined the cost-effectiveness of using prognostic information for clinical decision-making. These studies were of varying quality and highlight the fact that economic evaluation in this area appears still to be in its infancy. By combining methodologies used in determining prognosis with those used in health economic evaluation, it was possible to illustrate an approach for simulating the effectiveness (survival and quality-adjusted survival) and the cost-effectiveness associated with the decision to treat individual women or groups of women with different prognostic characteristics. The model showed that effectiveness and cost-effectiveness of adjuvant systemic therapy have the potential to vary substantially depending upon prognosis. For some women therapy may prove very effective and cost-effective, whereas for others it may actually prove detrimental (i.e. the reductions in health-related quality of life outweigh any survival benefit).
Outputs from the framework constructed using the methods described here have the potential to be useful for clinicians, attempting to determine whether net benefits can be obtained from administering adjuvant therapy for any presenting woman; and also for policy makers, who must be able to determine the total costs and outcomes associated with different prognosis based treatment protocols as compared with more conventional treat all or treat none policies. A risk table format enabling clinicians to look up a patient's prognostic factors to determine the likely benefits (survival and quality-adjusted survival) from administering therapy may be helpful. For policy makers, it was demonstrated that the model's output could be used to evaluate the cost-effectiveness of different treatment protocols based upon prognostic information. The framework should also be valuable in evaluating the likely impact and cost-effectiveness of new potential prognostic factors and adjuvant therapies.
研究利用预后信息来识别应接受辅助治疗的乳腺癌患者的成本效益。
1980年至2002年2月的电子数据库。对英国癌症中心和科室临床实践的一项调查。包含牛津地区早期乳腺癌女性患者预后因素、治疗及结局数据的大型回顾性数据集。
由一名信息专家检索6至9个数据库。采用循证方法对研究进行综述和筛选,并使用文献中报道的或为本研究试行和开发的标准评估工具评估每篇纳入论文的质量。对英国癌症中心和科室的临床实践进行了一项调查,以确保报告得出的结论能够得以实施。这些数据,连同系统综述中收集的信息,为健康经济建模所采用的方法提供了依据。开发了一个示例框架,用于在健康经济决策模型中纳入患者层面的预测。该框架应用于一个大型回顾性数据集,该数据集包含牛津地区早期乳腺癌女性患者的预后因素、治疗及结局数据。这些数据被用于直接估计一个基于参数回归的风险方程,据此开发出一个预后指数,并可观察到特定预后的基线乳腺癌风险估计值。已发表的治疗效果、卫生服务治疗成本和效用估计值被用于围绕此风险方程构建一个决策分析框架,从而能够模拟模型中所包含的所有可能预后因素组合的辅助治疗的有效性和成本效益。
乳腺癌预后因素缺乏高质量的系统综述和良好开展的研究是一个显著发现。没有预后因素研究或预后研究综述的登记册。许多综述采用的方法薄弱,原始研究方法类似且结果报告不佳。此外,患者群体、检测方法、结果分析、所用定义和结果报告存在很大差异。大多数研究似乎是回顾性的,有些使用了可能夸大结果的不恰当方法,如优化切点且未在独立人群中检验结果。极少有综述使用荟萃分析进行汇总分析并提供任何关联平均大小的估计值。相反,大多数综述依赖点数法。尽管已发表了许多乳腺癌预后模型,但很少有模型在独立环境中由独立团队重新检验。少数验证研究是在定义不明确的样本上进行的,样本有时规模较小且随访时间短,有时在验证模型时使用不同的患者结局。验证研究的证据表明支持诺丁汉预后指数(NPI)的预后价值。没有新的预后因素被证明能在很大程度上补充20世纪80年代确定的那些因素。该指数的改进取决于找到与淋巴结、分期和病理分级同样重要但相互独立的因素。NPI仍然是一个有用的临床工具,尽管其他因素可能会增强其用途。我们认为,对于他莫昔芬等激素治疗的激素受体状态(ER)以及HER2对曲妥珠单抗反应的预测不需要系统综述,因为这些药物的作用机制需要完整的受体。没有明确证据表明其他因素是反应和生存的有用预测指标。该调查证实,在英国为早期乳腺癌女性选择辅助全身治疗时,病理淋巴结状态、肿瘤分级、肿瘤大小和ER状态是临床上最重要的考虑因素。方案显示,尽管英国癌症中心在选择接受辅助治疗的女性时似乎使用相同的预后和预测因素,但临床实践中存在很大差异。一些中心使用基于NPI的方案,而其他中心则不使用单一指数评分。在使用NPI和不使用NPI的用户中,对于受益不确定的女性,各中心之间在指南方面存在差异。当主要根据ER或孕激素受体状态而非多种因素组合来决定为女性选择辅助激素治疗时,各科室之间的共识似乎最大。然而,关于谁应接受辅助化疗的指南则不太统一。对文献的检索仅发现五篇先前研究利用预后信息进行临床决策的成本效益分析的已发表论文。这些研究质量各异,突出表明该领域经济评估似乎仍处于起步阶段。通过将确定预后的方法与健康经济评估中使用的方法相结合,有可能说明一种模拟不同预后特征个体或群体女性接受治疗的有效性(生存和质量调整生存)以及成本效益的方法。该模型表明,辅助全身治疗的有效性和成本效益可能因预后而有很大差异。对于一些女性,治疗可能非常有效且具有成本效益,而对于另一些女性,实际上可能证明是有害的(即与健康相关的生活质量下降超过任何生存益处)。
使用此处所述方法构建的框架的结果有可能对临床医生有用,他们试图确定对任何前来就诊的女性给予辅助治疗是否能获得净效益;对政策制定者也有用,他们必须能够确定与基于不同预后的治疗方案相比,与更传统的全治疗或不治疗政策相关的总成本和结局。一种风险表形式,使临床医生能够查找患者的预后因素以确定给予治疗可能的益处(生存和质量调整生存)可能会有所帮助。对于政策制定者而言,已证明该模型的输出可用于基于预后信息评估不同治疗方案的成本效益。该框架在评估新的潜在预后因素和辅助治疗的可能影响和成本效益方面也应具有价值。