IEEE J Biomed Health Inform. 2022 Apr;26(4):1422-1431. doi: 10.1109/JBHI.2022.3163013. Epub 2022 Apr 14.
Each year there are nearly 57 million deaths worldwide, with over 2.7 million in the United States. Timely, accurate and complete death reporting is critical for public health, especially during the COVID-19 pandemic, as institutions and government agencies rely on death reports to formulate responses to communicable diseases. Unfortunately, determining the causes of death is challenging even for experienced physicians. The novel coronavirus and its variants may further complicate the task, as physicians and experts are still investigating COVID-related complications. To assist physicians in accurately reporting causes of death, an advanced Artificial Intelligence (AI) approach is presented to determine a chronically ordered sequence of conditions that lead to death (named as the causal sequence of death), based on decedent's last hospital discharge record. The key design is to learn the causal relationship among clinical codes and to identify death-related conditions. There exist three challenges: different clinical coding systems, medical domain knowledge constraint, and data interoperability. First, we apply neural machine translation models with various attention mechanisms to generate sequences of causes of death. We use the BLEU (BiLingual Evaluation Understudy) score with three accuracy metrics to evaluate the quality of generated sequences. Second, we incorporate expert-verified medical domain knowledge as constraints when generating the causal sequences of death. Lastly, we develop a Fast Healthcare Interoperability Resources (FHIR) interface that demonstrates the usability of this work in clinical practice. Our results match the state-of-art reporting and can assist physicians and experts in public health crisis such as the COVID-19 pandemic.
每年全球有近 5700 万人死亡,其中美国超过 270 万人。及时、准确和完整的死亡报告对公共卫生至关重要,尤其是在 COVID-19 大流行期间,因为各机构和政府机构依赖死亡报告来制定对传染病的应对措施。不幸的是,即使是经验丰富的医生,确定死亡原因也具有挑战性。新型冠状病毒及其变体可能会使这项任务更加复杂,因为医生和专家仍在调查与 COVID 相关的并发症。为了帮助医生准确报告死亡原因,提出了一种先进的人工智能 (AI) 方法,根据死者的最后一次出院记录,确定导致死亡的慢性有序条件序列(称为死亡的因果序列)。关键设计是学习临床代码之间的因果关系,并识别与死亡相关的条件。存在三个挑战:不同的临床编码系统、医学领域知识约束和数据互操作性。首先,我们应用具有各种注意力机制的神经机器翻译模型来生成死亡原因序列。我们使用 BLEU(双语评估替换单元)分数和三个准确性指标来评估生成序列的质量。其次,我们在生成死亡的因果序列时纳入了经过专家验证的医学领域知识作为约束。最后,我们开发了一个 Fast Healthcare Interoperability Resources (FHIR) 接口,展示了这项工作在临床实践中的可用性。我们的结果与最先进的报告相匹配,可以帮助医生和专家应对 COVID-19 等公共卫生危机。