The University of Sydney, Sydney, Australia.
Max Planck Institute for Human Development, Berlin, Germany.
Med Decis Making. 2024 May;44(4):451-462. doi: 10.1177/0272989X241241001. Epub 2024 Apr 12.
General practitioners (GPs) work in an ill-defined environment where diagnostic errors are prevalent. Previous research indicates that aggregating independent diagnoses can improve diagnostic accuracy in a range of settings. We examined whether aggregating independent diagnoses can also improve diagnostic accuracy for GP decision making. In addition, we investigated the potential benefit of such an approach in combination with a decision support system (DSS).
We simulated virtual groups using data sets from 2 previously published studies. In study 1, 260 GPs independently diagnosed 9 patient cases in a vignette-based study. In study 2, 30 GPs independently diagnosed 12 patient actors in a patient-facing study. In both data sets, GPs provided diagnoses in a control condition and/or DSS condition(s). Each GP's diagnosis, confidence rating, and years of experience were entered into a computer simulation. Virtual groups of varying sizes (range: 3-9) were created, and different collective intelligence rules (plurality, confidence, and seniority) were applied to determine each group's final diagnosis. Diagnostic accuracy was used as the performance measure.
Aggregating independent diagnoses by weighing them equally (i.e., the plurality rule) substantially outperformed average individual accuracy, and this effect increased with increasing group size. Selecting diagnoses based on confidence only led to marginal improvements, while selecting based on seniority reduced accuracy. Combining the plurality rule with a DSS further boosted performance.
Combining independent diagnoses may substantially improve a GP's diagnostic accuracy and subsequent patient outcomes. This approach did, however, not improve accuracy in all patient cases. Therefore, future work should focus on uncovering the conditions under which collective intelligence is most beneficial in general practice.
We examined whether aggregating independent diagnoses of GPs can improve diagnostic accuracy.Using data sets of 2 previously published studies, we composed virtual groups of GPs and combined their independent diagnoses using 3 collective intelligence rules (plurality, confidence, and seniority).Aggregating independent diagnoses by weighing them equally substantially outperformed average individual GP accuracy, and this effect increased with increasing group size.Combining independent diagnoses may substantially improve GP's diagnostic accuracy and subsequent patient outcomes.
全科医生(GP)在一个诊断错误普遍存在的界定不明确的环境中工作。先前的研究表明,在各种环境中,汇总独立诊断可以提高诊断准确性。我们研究了汇总独立诊断是否也可以提高 GP 决策的诊断准确性。此外,我们还研究了在结合决策支持系统(DSS)的情况下,这种方法的潜在益处。
我们使用来自之前发表的两项研究的数据集模拟虚拟小组。在研究 1 中,260 名 GP 在基于病例的研究中独立诊断了 9 个患者病例。在研究 2 中,30 名 GP 在患者面对的研究中独立诊断了 12 名患者扮演者。在两个数据集,GP 都在控制条件和/或 DSS 条件下提供诊断。每个 GP 的诊断、置信度评分和经验年限都输入到计算机模拟中。创建了不同大小的虚拟小组(范围:3-9),并应用了不同的集体智慧规则(多数、信心和资历)来确定每个小组的最终诊断。诊断准确性用作性能衡量标准。
通过平等加权汇总独立诊断(即多数规则)大大优于平均个体准确性,并且这种效果随着小组规模的增加而增加。仅根据信心选择诊断只会带来边际改善,而根据资历选择则会降低准确性。将多数规则与 DSS 相结合进一步提高了性能。
汇总独立诊断可以大大提高 GP 的诊断准确性和随后的患者结果。然而,这种方法并非在所有患者病例中都能提高准确性。因此,未来的工作应重点揭示集体智慧在一般实践中最有益的条件。
我们研究了汇总 GP 的独立诊断是否可以提高诊断准确性。使用之前发表的两项研究的数据集,我们组成了 GP 的虚拟小组,并使用了三种集体智慧规则(多数、信心和资历)来汇总他们的独立诊断。通过平等加权汇总独立诊断大大优于平均个体 GP 准确性,并且这种效果随着小组规模的增加而增加。汇总独立诊断可以大大提高 GP 的诊断准确性和随后的患者结果。