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Medicine Creek Analytics, 3700 Pacific Hwy E #400, Fife, WA 98424, USA.
J AOAC Int. 2023 Mar 1;106(2):484-489. doi: 10.1093/jaoacint/qsac140.
Cannabis species have a propensity to bioaccumulate toxic heavy metals from their growth media. Increased testing for these metals is required to improve the safety of the legal medical and recreational cannabis industries. However, the current methods used for mandated heavy metals tests are not efficient for a large framework. As a result, there is limited testing capacity, high testing costs, and long wait times for results across North America.
This study aimed to demonstrate that pooling strategies can be used to increase the throughput in cannabis testing labs and reduce some of the strain on the industry.
This paper presents an algorithm to simulate different pooling strategies. The algorithm was applied to real world data sets collected from Washington and California state testing labs.
Using a single pooling method, a pool size of three samples on average resulted in a 23.8% reduction in tests required for 100 samples for the Washington lab. For the California lab, pooling four samples on average resulted in a 54.1% reduction in tests required for 100 samples.
The algorithms generated from the Washington and California lab data demonstrated that pooled testing strategies can be developed on a case-by-case method to reduce the time, effort, and costs associated with heavy metals tests.
The benefits of pooled testing will vary depending on the region and rate of contamination seen in each testing lab. Overall, our results demonstrate pooled testing has the potential to reduce the fiscal costs of testing through increased efficiency, allowing increased testing, leading to greater safety.
大麻植物从生长介质中吸收有毒重金属的倾向。为了提高合法医疗和娱乐用大麻产业的安全性,需要对这些金属进行更多的检测。然而,目前用于强制进行重金属检测的方法对于大型框架来说效率不高。因此,北美各地的检测能力有限,检测成本高,结果等待时间长。
本研究旨在证明可以使用混合策略来提高大麻检测实验室的通量,并减轻行业的一些压力。
本文提出了一种用于模拟不同混合策略的算法。该算法应用于从华盛顿州和加利福尼亚州测试实验室收集的真实数据集。
使用单一的混合方法,对于华盛顿实验室,平均每 3 个样本组成一个混合样本,可将 100 个样本所需的测试减少 23.8%。对于加利福尼亚州实验室,平均每 4 个样本组成一个混合样本,可将 100 个样本所需的测试减少 54.1%。
根据华盛顿州和加利福尼亚州实验室的数据生成的算法表明,可以针对特定情况开发混合测试策略,以减少与重金属测试相关的时间、精力和成本。
混合测试的好处将根据每个测试实验室的地区和污染率而有所不同。总体而言,我们的研究结果表明,混合测试具有通过提高效率、增加测试、提高安全性来降低测试成本的潜力。