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Structured Abstract
Background
Systematic reviewers are challenged by how to report and synthesize information about benefits and harms of medical interventions so that decisionmakers with varying preferences can better assess the balance of benefit and harm. Quantitative approaches exist for assessing benefits and harms, but it is unclear whether they are applicable to systematic reviews.
Objectives
The objectives of this report are: (1) to describe the challenges of quantitative approaches for assessing benefits and harms, (2) to describe methodological characteristics of existing quantitative approaches for assessing benefits and harms, (3) to determine the role of values and preferences in assessing benefits and harms across each step of a systematic review and (4) to formulate principles for assessing benefits and harms in systematic reviews.
Process
We formed a multidisciplinary team with expertise in clinical medicine, systematic reviews, statistics, and epidemiology. The team reviewed the literature on quantitative approaches for assessing benefits and harms of medical interventions, and held 12 weekly meetings to establish consensus about: 1) the challenges in assessing benefits and harms; 2) the methodological characteristics of approaches that have been used; and 3) the role of values and preferences when assessing benefits and harms in systematic reviews.
The team used that information to formulate principles for analyzing benefits and harms in systematic reviews so that decisionmakers are able to weigh the benefits and harms for a given population. An external panel of experts provided input in this process.
Results
Our team identified numerous challenges for the assessment of benefits and harms. The main challenges relate to selection of health outcomes important to patients, information asymmetry (e.g., reliable and robust data on benefits with sparse data on harms), and calculation of statistical uncertainty if benefit and harm are put on the same scale using a benefit harm comparison metric, and consideration of patient preferences.
We identified 16 quantitative approaches for the assessment of benefits and harms. Twelve of the methods can be used in a systematic review because the methods can be applied with the types of summary data that are typically reported and do not require individual patient data. Simpler approaches, such as the ratio of the number needed to treat to the number needed to harm, may be suitable for relatively simple decisionmaking contexts where relevant benefit and harm outcomes are few in number and similar in importance. More complex approaches are needed for decisionmaking contexts having a large number of relevant benefits and harms.
For individual-level decisions, values and preferences are key for determining the balance of benefit and harm. Choices are made by decisionmakers that are informed by the preferences of patients and other considerations. These choices, and therefore preferences, have an important role in determining how benefits and harms are assessed in systematic reviews. These choices and preferences also affect how guideline developers frame recommendations, how regulatory bodies make decisions at the population level, and how clinicians, patients, and other end users make decisions at the individual level.
The team formulated principles to conduct comparative assessments of benefits and harms in the context of a systematic review. For example, we recommend that systematic reviews define the decisionmaking context, report the sources of evidence used (e.g., estimates of baseline risks or treatment effects), be explicit about if and how patient preferences are considered, and provide a rationale for choosing a particular quantitative approach for comparative assessment of benefits and harms.
Conclusions
Quantitative approaches for comparative assessment of benefits and harms have strengths and limitations. The choice of a particular approach depends on the decisionmaking context, the quality and quantity of available data, and the epidemiological-statistical expertise of the systematic review team. A quantitative approach may help to improve the transparency of a review, relative to a qualitative approach, by being explicit about how benefits and harms are estimated and compared. Such transparency may help decisionmakers give proper consideration to complex information about benefits and harms.