Costa Dalton Breno, Pinna Felipe Coelho de Abreu, Joiner Anjni Patel, Rice Brian, Souza João Vítor Perez de, Gabella Júlia Loverde, Andrade Luciano, Vissoci João Ricardo Nickenig, Néto João Carlos
Department of Psychology, Pontifical Catholic University of Rio Grande do Sul, Rio Grande do Sul, Brazil.
Department of Computer and Digital Systems Engineering, Polytechnic School, University of São Paulo, São Paulo, São Paulo, Brazil.
PLOS Digit Health. 2023 Dec 6;2(12):e0000406. doi: 10.1371/journal.pdig.0000406. eCollection 2023 Dec.
Emergency care-sensitive conditions (ECSCs) require rapid identification and treatment and are responsible for over half of all deaths worldwide. Prehospital emergency care (PEC) can provide rapid treatment and access to definitive care for many ECSCs and can reduce mortality in several different settings. The objective of this study is to propose a method for using artificial intelligence (AI) and machine learning (ML) to transcribe audio, extract, and classify unstructured emergency call data in the Serviço de Atendimento Móvel de Urgência (SAMU) system in southern Brazil. The study used all "1-9-2" calls received in 2019 by the SAMU Novo Norte Emergency Regulation Center (ERC) call center in Maringá, in the Brazilian state of Paraná. The calls were processed through a pipeline using machine learning algorithms, including Automatic Speech Recognition (ASR) models for transcription of audio calls in Portuguese, and a Natural Language Understanding (NLU) classification model. The pipeline was trained and validated using a dataset of labeled calls, which were manually classified by medical students using LabelStudio. The results showed that the AI model was able to accurately transcribe the audio with a Word Error Rate of 42.12% using Wav2Vec 2.0 for ASR transcription of audio calls in Portuguese. Additionally, the NLU classification model had an accuracy of 73.9% in classifying the calls into different categories in a validation subset. The study found that using AI to categorize emergency calls in low- and middle-income countries is largely unexplored, and the applicability of conventional open-source ML models trained on English language datasets is unclear for non-English speaking countries. The study concludes that AI can be used to transcribe audio and extract and classify unstructured emergency call data in an emergency system in southern Brazil as an initial step towards developing a decision-making support tool.
急救敏感疾病(ECSCs)需要快速识别和治疗,且在全球所有死亡病例中占比超过一半。院前急救(PEC)可为许多急救敏感疾病提供快速治疗并使其获得确定性治疗,还能在多种不同情况下降低死亡率。本研究的目的是提出一种利用人工智能(AI)和机器学习(ML)来转录音频、提取并分类巴西南部紧急医疗服务(SAMU)系统中非结构化紧急呼叫数据的方法。该研究使用了巴西巴拉那州马林加市SAMU新北区急救调度中心(ERC)呼叫中心在2019年接到的所有“1 - 9 - 2”呼叫。这些呼叫通过一个使用机器学习算法的流程进行处理,包括用于将葡萄牙语音频呼叫转录的自动语音识别(ASR)模型,以及一个自然语言理解(NLU)分类模型。该流程使用一个带标签呼叫的数据集进行训练和验证,这些呼叫由医学生使用LabelStudio进行手动分类。结果表明,使用Wav2Vec 2.0对葡萄牙语音频呼叫进行ASR转录时,AI模型能够以42.12%的词错误率准确转录音频。此外,NLU分类模型在验证子集中将呼叫分类到不同类别的准确率为73.9%。该研究发现,在低收入和中等收入国家使用AI对紧急呼叫进行分类在很大程度上尚未得到探索,并且在非英语国家,基于英语语言数据集训练的传统开源ML模型的适用性尚不清楚。该研究得出结论,AI可用于转录音频、提取并分类巴西南部紧急系统中的非结构化紧急呼叫数据,这是朝着开发决策支持工具迈出的第一步。