论文标题
向后接触在网络中的有效性
The effectiveness of backward contact tracing in networks
论文作者
论文摘要
发现和孤立感染的个体是流行病控制的基石。由于许多传染病通过紧密的接触传播,因此接触示踪是病例发现和控制的关键工具。但是,尽管进行了广泛执行的接触追踪,但对接触追踪的数学理解尚未完全确定,并且尚未清楚地理解是什么决定了接触追踪的疗效。在这里,我们揭示,与“向前”的追踪相比,疾病传播的“前进”追踪,“向后”的追踪---疾病传播的追踪 - - - - - - - 更有效。向后追踪的有效性是由于触点中的异质性引起的简单但被忽视的偏见。使用对合成和高分辨率经验接触数据集的模拟,我们表明,即使在检测受感染者的较小概率上,战略性执行的接触跟踪也可以防止大量的进一步传输。我们还表明,就每隔隔离的预防传输数量而言,与少量接触追踪相结合的情况比单独隔离更有效。通过证明向后的接触追踪在发现超级扩张事件方面非常有效,我们认为接触追踪的潜在有效性已被低估。因此,迫切需要重新审视当前的接触追踪策略,以便它们利用各种形式的偏见。我们的结果对数字接触跟踪也产生了重要的后果,因为在遵守这些新平台的隐私要求的同时纳入向后和深度跟踪的能力至关重要。
Discovering and isolating infected individuals is a cornerstone of epidemic control. Because many infectious diseases spread through close contacts, contact tracing is a key tool for case discovery and control. However, although contact tracing has been performed widely, the mathematical understanding of contact tracing has not been fully established and it has not been clearly understood what determines the efficacy of contact tracing. Here, we reveal that, compared with "forward" tracing---tracing to whom disease spreads, "backward" tracing---tracing from whom disease spreads---is profoundly more effective. The effectiveness of backward tracing is due to simple but overlooked biases arising from the heterogeneity in contacts. Using simulations on both synthetic and high-resolution empirical contact datasets, we show that even at a small probability of detecting infected individuals, strategically executed contact tracing can prevent a significant fraction of further transmissions. We also show that---in terms of the number of prevented transmissions per isolation---case isolation combined with a small amount of contact tracing is more efficient than case isolation alone. By demonstrating that backward contact tracing is highly effective at discovering super-spreading events, we argue that the potential effectiveness of contact tracing has been underestimated. Therefore, there is a critical need for revisiting current contact tracing strategies so that they leverage all forms of biases. Our results also have important consequences for digital contact tracing because it will be crucial to incorporate the capability for backward and deep tracing while adhering to the privacy-preserving requirements of these new platforms.