Clinical Research Department, Max Healthcare, New Delhi, India.
J Postgrad Med. 2021 Oct-Dec;67(4):219-223. doi: 10.4103/jpgm.JPGM_230_21.
Almost all bio-statisticians and medical researchers believe that a large sample is always helpful in providing more reliable results. Whereas this is true for some specific cases, a large sample may not be helpful in more situations than we contemplate because of the higher possibility of errors and reduced validity. Many medical breakthroughs have occurred with self-experimentation and single experiments. Studies, particularly analytical studies, may provide more truthful results with a small sample because intensive efforts can be made to control all the confounders, wherever they operate, and sophisticated equipment can be used to obtain more accurate data. A large sample may be required only for the studies with highly variable outcomes, where an estimate of the effect size with high precision is required, or when the effect size to be detected is small. This communication underscores the importance of small samples in reaching a valid conclusion in certain situations and describes the situations where a large sample is not only unnecessary but may even compromise the validity by not being able to exercise full care in the assessments. What sample size is small depends on the context.
几乎所有的生物统计学家和医学研究人员都认为大样本总是有助于提供更可靠的结果。虽然这在某些特定情况下是正确的,但由于错误的可能性更高和有效性降低,大样本在更多情况下可能无助于研究。许多医学突破是通过自我实验和单实验实现的。研究,特别是分析性研究,可能会通过小样本提供更真实的结果,因为可以集中精力控制所有混杂因素,无论它们在哪里作用,并且可以使用精密设备获得更准确的数据。大样本可能仅适用于结果高度可变的研究,需要高精度估计效应大小的情况,或者需要检测的效应大小较小时。本通讯强调了在某些情况下小样本在得出有效结论方面的重要性,并描述了大样本不仅不必要,而且甚至可能由于无法在评估中充分注意而损害有效性的情况。小样本的大小取决于具体情况。