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  • 文章类型: Journal Article
    背景:声乐生物标志物,从声音特征的声学分析中得出,提供非侵入性的医疗筛查途径,诊断,和监测。先前的研究证明了通过智能手机记录语音的声学分析来预测2型糖尿病的可行性。在这项工作的基础上,这项研究探讨了音频数据压缩对声学声乐生物标志物开发的影响,这对于在医疗保健中更广泛的适用性至关重要。
    目的:本研究的目的是分析常见的音频压缩算法(MP3,M4A,和WMA)由3种不同的转换工具以2种比特率应用,影响对声音生物标志物检测至关重要的特征。
    方法:使用转换为MP3,M4A的未压缩语音样本,研究了音频数据压缩对声学声乐生物标志物开发的影响。和WMA格式在2比特率(320和128kbps)与MediaHuman(MH)音频转换器,WonderShare(WS)UniConverter,和快进运动图像专家组(FFmpeg)。数据集包括来自505名参与者的记录,总共17298个音频文件,使用智能手机收集。参与者每天记录一个固定的英语句子,最多6次,最长14天。特征提取,包括音高,抖动,强度,和梅尔频率倒谱系数(MFCC),是使用Python和Parselmouth进行的。使用Wilcoxon符号秩检验和Bonferroni校正进行多重比较用于统计分析。
    结果:在这项研究中,最初从505名参与者那里录制了36,970个音频文件,筛选后,有17298张录音符合固定的句子标准。音频转换软件之间的差异,MH,WS,和FFmpeg,值得注意的是,影响压缩结果,如恒定或可变比特率。分析包括不同的数据压缩格式和广泛的语音特征和MFCC。Wilcoxon符号秩检验得出P值,低于Bonferroni校正的显著性水平的那些表明由于压缩引起的显著改变。结果表明了跨格式和比特率的压缩的特定特征影响。与WS转换的文件相比,MH转换的文件表现出更大的弹性。比特率也影响了功能稳定性,38例唯一受单一比特率影响。值得注意的是,语音特征在各种转换方法中显示出比MFCC更高的稳定性。
    结论:发现压缩效果具有特定特征,MH和FFmpeg表现出更大的弹性。某些功能一直受到影响,强调理解特征弹性对诊断应用的重要性。考虑到声乐生物标志物在医疗保健中的实施,为数据存储或传输目的找到通过压缩保持一致的功能是很有价值的。专注于特定的功能和格式,未来的研究可以拓宽范围,包括不同的特征,实时压缩算法,和各种记录方法。这项研究增强了我们对音频压缩对语音特征和MFCC的影响的理解,为跨领域开发应用程序提供见解。该研究强调了特征稳定性在处理压缩音频数据中的重要性,为在不断发展的技术环境中使用明智的语音数据奠定基础。
    BACKGROUND: Vocal biomarkers, derived from acoustic analysis of vocal characteristics, offer noninvasive avenues for medical screening, diagnostics, and monitoring. Previous research demonstrated the feasibility of predicting type 2 diabetes mellitus through acoustic analysis of smartphone-recorded speech. Building upon this work, this study explores the impact of audio data compression on acoustic vocal biomarker development, which is critical for broader applicability in health care.
    OBJECTIVE: The objective of this research is to analyze how common audio compression algorithms (MP3, M4A, and WMA) applied by 3 different conversion tools at 2 bitrates affect features crucial for vocal biomarker detection.
    METHODS: The impact of audio data compression on acoustic vocal biomarker development was investigated using uncompressed voice samples converted into MP3, M4A, and WMA formats at 2 bitrates (320 and 128 kbps) with MediaHuman (MH) Audio Converter, WonderShare (WS) UniConverter, and Fast Forward Moving Picture Experts Group (FFmpeg). The data set comprised recordings from 505 participants, totaling 17,298 audio files, collected using a smartphone. Participants recorded a fixed English sentence up to 6 times daily for up to 14 days. Feature extraction, including pitch, jitter, intensity, and Mel-frequency cepstral coefficients (MFCCs), was conducted using Python and Parselmouth. The Wilcoxon signed rank test and the Bonferroni correction for multiple comparisons were used for statistical analysis.
    RESULTS: In this study, 36,970 audio files were initially recorded from 505 participants, with 17,298 recordings meeting the fixed sentence criteria after screening. Differences between the audio conversion software, MH, WS, and FFmpeg, were notable, impacting compression outcomes such as constant or variable bitrates. Analysis encompassed diverse data compression formats and a wide array of voice features and MFCCs. Wilcoxon signed rank tests yielded P values, with those below the Bonferroni-corrected significance level indicating significant alterations due to compression. The results indicated feature-specific impacts of compression across formats and bitrates. MH-converted files exhibited greater resilience compared to WS-converted files. Bitrate also influenced feature stability, with 38 cases affected uniquely by a single bitrate. Notably, voice features showed greater stability than MFCCs across conversion methods.
    CONCLUSIONS: Compression effects were found to be feature specific, with MH and FFmpeg showing greater resilience. Some features were consistently affected, emphasizing the importance of understanding feature resilience for diagnostic applications. Considering the implementation of vocal biomarkers in health care, finding features that remain consistent through compression for data storage or transmission purposes is valuable. Focused on specific features and formats, future research could broaden the scope to include diverse features, real-time compression algorithms, and various recording methods. This study enhances our understanding of audio compression\'s influence on voice features and MFCCs, providing insights for developing applications across fields. The research underscores the significance of feature stability in working with compressed audio data, laying a foundation for informed voice data use in evolving technological landscapes.
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  • 文章类型: Journal Article
    背景:人工智能(AI)的使用可以彻底改变医疗保健,但这引发了风险担忧。因此,了解临床医生如何信任和接受AI技术至关重要。胃肠病学,由于其性质是基于图像和干预重的专业,是人工智能辅助诊断和管理可以广泛应用的领域。
    目的:本研究旨在研究胃肠病学家或胃肠外科医生如何接受和信任AI在计算机辅助检测(CADe)中的使用,计算机辅助表征(CADx),和计算机辅助干预(CADi)在结肠镜检查中结直肠息肉。
    方法:我们于2022年11月至2023年1月进行了基于网络的问卷调查,涉及亚太地区的5个国家或地区。问卷包括用户背景和人口统计等变量;使用人工智能的意图,感知风险;接受;以及对人工智能辅助检测的信任,表征,和干预。我们为参与者提供了与结肠镜检查和结直肠息肉管理相关的3种AI方案。这些场景反映了结肠镜检查中现有的AI应用,即息肉的检测(CADe),息肉(CADx)的表征,和AI辅助息肉切除术(CADi)。
    结果:总计,165胃肠病学家和胃肠外科医师使用医学交流专家设计的结构化问卷对基于网络的调查做出了回应。参与者的平均年龄为44岁(SD9.65),大部分为男性(n=116,70.3%),大多在公立医院工作(n=110,66.67%)。参与者报告了相对较高的AI暴露,111人(67.27%)报告使用人工智能进行消化系统疾病的临床诊断或治疗。胃肠病学家对在诊断中使用AI非常感兴趣,但在风险预测和接受AI方面表现出不同程度的保留。大多数参与者(n=112,72.72%)也表示有兴趣在未来的实践中使用AI。CADe被83.03%(n=137)的受访者接受,CADx被78.79%(n=130)接受,CADi的接受率为72.12%(n=119)。85.45%(n=141)的受访者信任CADe和CADx,72.12%(n=119)的受访者信任CADi。在风险认知方面没有特定应用的差异,但更有经验的临床医生给出了较低的风险评级.
    结论:胃肠病学家报告了在大肠息肉治疗中使用AI辅助结肠镜检查的总体接受度和信任度较高。然而,此信任级别取决于应用场景。此外,风险感知之间的关系,接受,信任在胃肠病学实践中使用人工智能并不简单。
    BACKGROUND: The use of artificial intelligence (AI) can revolutionize health care, but this raises risk concerns. It is therefore crucial to understand how clinicians trust and accept AI technology. Gastroenterology, by its nature of being an image-based and intervention-heavy specialty, is an area where AI-assisted diagnosis and management can be applied extensively.
    OBJECTIVE: This study aimed to study how gastroenterologists or gastrointestinal surgeons accept and trust the use of AI in computer-aided detection (CADe), computer-aided characterization (CADx), and computer-aided intervention (CADi) of colorectal polyps in colonoscopy.
    METHODS: We conducted a web-based questionnaire from November 2022 to January 2023, involving 5 countries or areas in the Asia-Pacific region. The questionnaire included variables such as background and demography of users; intention to use AI, perceived risk; acceptance; and trust in AI-assisted detection, characterization, and intervention. We presented participants with 3 AI scenarios related to colonoscopy and the management of colorectal polyps. These scenarios reflect existing AI applications in colonoscopy, namely the detection of polyps (CADe), characterization of polyps (CADx), and AI-assisted polypectomy (CADi).
    RESULTS: In total, 165 gastroenterologists and gastrointestinal surgeons responded to a web-based survey using the structured questionnaire designed by experts in medical communications. Participants had a mean age of 44 (SD 9.65) years, were mostly male (n=116, 70.3%), and mostly worked in publicly funded hospitals (n=110, 66.67%). Participants reported relatively high exposure to AI, with 111 (67.27%) reporting having used AI for clinical diagnosis or treatment of digestive diseases. Gastroenterologists are highly interested to use AI in diagnosis but show different levels of reservations in risk prediction and acceptance of AI. Most participants (n=112, 72.72%) also expressed interest to use AI in their future practice. CADe was accepted by 83.03% (n=137) of respondents, CADx was accepted by 78.79% (n=130), and CADi was accepted by 72.12% (n=119). CADe and CADx were trusted by 85.45% (n=141) of respondents and CADi was trusted by 72.12% (n=119). There were no application-specific differences in risk perceptions, but more experienced clinicians gave lesser risk ratings.
    CONCLUSIONS: Gastroenterologists reported overall high acceptance and trust levels of using AI-assisted colonoscopy in the management of colorectal polyps. However, this level of trust depends on the application scenario. Moreover, the relationship among risk perception, acceptance, and trust in using AI in gastroenterology practice is not straightforward.
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  • 文章类型: Journal Article
    背景:在依靠行政卫生数据时,对医院获得性压力性伤害(HAPI)的监视通常是次优的,众所周知,国际疾病分类(ICD)代码具有很长的延迟,并且编码不足。我们在自由文本笔记上利用自然语言处理(NLP)应用程序,特别是住院护理笔记,来自电子病历(EMR),更准确、更及时地识别HAPI。
    目的:这项研究旨在表明,基于EMR的表型算法比单独的ICD-10-CA算法更适合检测HAPI,而临床日志使用护理笔记通过NLP以更高的准确性记录。
    方法:在2015年至2018年在卡尔加里进行的一项临床试验中,从当地三级急性护理医院的从头到脚皮肤评估中确定了患有HAPI的患者。艾伯塔省,加拿大。与出院摘要数据库链接后,从EMR数据库中提取试验期间记录的临床记录。在模型开发过程中,通过顺序正向选择处理了几种临床注释的不同组合。使用随机森林(RF)开发了用于HAPI检测的文本分类算法,极端梯度提升(XGBoost),和深度学习模型。调整分类阈值以使该模型能够实现与基于ICD的表型研究相似的特异性。评估了每个模型的性能,并在指标之间进行了比较,包括灵敏度,正预测值,负预测值,和F1得分。
    结果:本研究使用了来自280名符合条件的患者的数据,其中97例患者在试验期间出现HAPI.RF是最佳执行模型,灵敏度为0.464(95%CI0.365-0.563),特异性0.984(95%CI0.965-1.000),F1评分为0.612(95%CI为0.473-0.751)。与先前报道的基于ICD的算法的性能相比,机器学习(ML)模型在不牺牲太多特异性的情况下达到了更高的灵敏度。
    结论:基于EMR的NLP表型算法在HAPI病例检测中的性能优于单独的ICD-10-CA代码。EMR中每日生成的护理笔记是ML模型准确检测不良事件的宝贵数据资源。该研究有助于提高自动化医疗质量和安全监控。
    BACKGROUND: Surveillance of hospital-acquired pressure injuries (HAPI) is often suboptimal when relying on administrative health data, as International Classification of Diseases (ICD) codes are known to have long delays and are undercoded. We leveraged natural language processing (NLP) applications on free-text notes, particularly the inpatient nursing notes, from electronic medical records (EMRs), to more accurately and timely identify HAPIs.
    OBJECTIVE: This study aimed to show that EMR-based phenotyping algorithms are more fitted to detect HAPIs than ICD-10-CA algorithms alone, while the clinical logs are recorded with higher accuracy via NLP using nursing notes.
    METHODS: Patients with HAPIs were identified from head-to-toe skin assessments in a local tertiary acute care hospital during a clinical trial that took place from 2015 to 2018 in Calgary, Alberta, Canada. Clinical notes documented during the trial were extracted from the EMR database after the linkage with the discharge abstract database. Different combinations of several types of clinical notes were processed by sequential forward selection during the model development. Text classification algorithms for HAPI detection were developed using random forest (RF), extreme gradient boosting (XGBoost), and deep learning models. The classification threshold was tuned to enable the model to achieve similar specificity to an ICD-based phenotyping study. Each model\'s performance was assessed, and comparisons were made between the metrics, including sensitivity, positive predictive value, negative predictive value, and F1-score.
    RESULTS: Data from 280 eligible patients were used in this study, among whom 97 patients had HAPIs during the trial. RF was the optimal performing model with a sensitivity of 0.464 (95% CI 0.365-0.563), specificity of 0.984 (95% CI 0.965-1.000), and F1-score of 0.612 (95% CI of 0.473-0.751). The machine learning (ML) model reached higher sensitivity without sacrificing much specificity compared to the previously reported performance of ICD-based algorithms.
    CONCLUSIONS: The EMR-based NLP phenotyping algorithms demonstrated improved performance in HAPI case detection over ICD-10-CA codes alone. Daily generated nursing notes in EMRs are a valuable data resource for ML models to accurately detect adverse events. The study contributes to enhancing automated health care quality and safety surveillance.
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  • 文章类型: Journal Article
    肼(N2H4),一种重要的化工原料,改善人们的生活,促进人类进步。肼的使用或泄漏已造成环境污染,影响水,土壤,和生物。肼同时由于其致癌特性而对人类健康存在可能的风险。因此,肼的快速和精确检测在环境研究和生物环境中至关重要。我们制备了一种红色荧光开启探针(XT-HZ)来特异性检测肼。该探针对具有570nm的激发波长和625nm的发射波长的肼(63nM)具有低检测限。此外,探针XT-HZ具有优异的水溶性,高选择性,对肼的检测具有良好的灵敏度。最后,XT-HZ探针用于活细胞中N2H4的成像,斑马鱼和环境水样。
    Hydrazine (N2H4), a crucial chemical raw material, enhances people\'s lives and fosters human progress. Hydrazine usage or leakage has caused environmental contamination, affecting water, soil, and living beings. Hydrazine simultaneously presents a possible risk to human health due to its carcinogenic properties. Thus, quick and precise detection of hydrazine is crucial in environmental studies and biological contexts. We prepared a red-emitting fluorescence turn-on probe (XT-HZ) to detect hydrazine specifically. The probe has a low detecting limit for hydrazine (63 nM) with excitation wavelength at 570 nm and emission wavelength at 625 nm. Besides, the probe XT-HZ had excellent water solubility, high selectivity, and good sensitivity for detecting hydrazine. Finally, probe XT-HZ was applied in the imaging of N2H4 in living cells, zebrafish and environmental water samples.
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  • 文章类型: Journal Article
    这篇观点论文考虑了作者对智能手机潜在作用的看法,可穿戴设备,和其他癌症诊断技术。我们相信,这些技术可能是追求早期癌症诊断的有价值的补充,因为它们提供了及时检测信号或症状的解决方案,并监测行为的细微变化,否则可能会被遗漏。除了信号检测,技术可以帮助症状解释,指导和促进获得医疗保健。本文旨在概述为什么这些技术对早期癌症检测有价值的科学原理。以及概述研究和开发的下一步步骤,以推动调查智能手机和可穿戴设备在这方面的潜力,并优化实施。我们提请注意成功实施的潜在障碍,包括通过与目标群体的强大研究来开发具有足够实用性和准确性的信号和传感器的难度。存在监管挑战;创新加剧不平等的潜力;以及围绕可接受性的问题,摄取,以及预期目标群体和医疗保健从业人员的正确使用。最后,有可能对个人和医疗保健服务造成意想不到的后果,包括不必要的焦虑,增加症状负担,过度调查,以及医疗资源的不当使用。
    This viewpoint paper considers the authors\' perspectives on the potential role of smartphones, wearables, and other technologies in the diagnosis of cancer. We believe that these technologies could be valuable additions in the pursuit of early cancer diagnosis, as they offer solutions to the timely detection of signals or symptoms and monitoring of subtle changes in behavior that may otherwise be missed. In addition to signal detection, technologies could assist symptom interpretation and guide and facilitate access to health care. This paper aims to provide an overview of the scientific rationale as to why these technologies could be valuable for early cancer detection, as well as outline the next steps for research and development to drive investigation into the potential for smartphones and wearables in this context and optimize implementation. We draw attention to potential barriers to successful implementation, including the difficulty of the development of signals and sensors with sufficient utility and accuracy through robust research with the target group. There are regulatory challenges; the potential for innovations to exacerbate inequalities; and questions surrounding acceptability, uptake, and correct use by the intended target group and health care practitioners. Finally, there is potential for unintended consequences on individuals and health care services including unnecessary anxiety, increased symptom burden, overinvestigation, and inappropriate use of health care resources.
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  • 文章类型: Journal Article
    背景:研究表明,在儿童性虐待(CSA)的所有幸存者中,只有大约一半的人在儿童期和青春期发现了这种虐待。这令人担忧,因为CSA与以后生活中的大量痛苦有关。儿童和青少年精神病学(CAP)中暴露于CSA的儿童和青少年比例明显高于普通人群。医疗保健专业人士报告说,发现CSA是一项复杂而具有挑战性的任务。然而,我们对它们在发现CSA时是如何进行的知之甚少。因此,有必要更多地了解医疗保健人员的经验,以促进和增加CSA披露。该研究旨在探索挪威的CAP医疗保健专业人员在评估和检测CSA时如何进行,他们如何体验这项工作,以及阻碍或促进他们努力的因素。
    方法:本研究采用混合方法。数据是通过匿名在线调查收集的,生成定量和定性数据。样本由CAP的111名医疗保健专业人员组成,其中84%是女性,平均年龄40.7岁(范围24-72;sd=10.8)。CAP临床经验的平均年数为8.3年(范围0-41;sd=7.5)。定量数据采用描述性统计分析,相关性,和独立样本t检验,而定性数据是使用基于团队的定性内容分析进行分析的。
    结果:结果表明,CSA的检测被视为重要的,但是CAP中的复杂任务,现有程序被认为是不够的。当他们怀疑或检测到CSA时,治疗师大多对如何进行有信心,然而他们很少检测到CSA。在最初的评估中,他们采用了标准化的程序,但是如果他们对可能的CSA的怀疑持续存在,他们似乎更依赖临床判断。确定了CSA检测的具体挑战和促进者,在个人和组织中。
    结论:该研究强调了医疗专业人员和CAP系统在评估CSA时面临的挑战和复杂性,这可能是低检测率的原因。结果表明,医疗保健专业人员认为,临床自主性和针对性能力发展的空间可能会改善CSA检测。此外,研究结果表明,CAP需要定义机构内部和机构之间的角色和责任。
    BACKGROUND: Research shows that only around half of all survivors of child sexual abuse (CSA) disclose the abuse during childhood and adolescence. This is worrying, as CSA is related to substantial suffering later in life. The proportion of children and adolescents who have been exposed to CSA is significantly higher in Child and Adolescent Psychiatry (CAP) than in the general population. Healthcare professionals report that uncovering CSA is a complex and challenging task. However, we know little about how they proceed when uncovering CSA. More knowledge of healthcare personnel\'s experience is therefore necessary to facilitate and increase CSA disclosure. The study aims to explore how CAP healthcare professionals in Norway proceed when assessing and detecting CSA, how they experience this work, and what hinders or facilitates their efforts.
    METHODS: The study employed a mixed method approach. Data was collected through an anonymous online survey, generating both quantitative and qualitative data. The sample consisted of 111 healthcare professionals in CAP, of whom 84% were women, with a mean age of 40.7 years (range 24-72; sd = 10.8). Mean years of CAP clinical experience were 8.3 years (range 0-41; sd = 7.5). The quantitative data was analysed using descriptive statistics, correlations, and independent sample t-tests, while the qualitative data was analysed using a team-based qualitative content analysis.
    RESULTS: The results showed that detection of CSA was viewed as an important, but complex task in CAP, and the existing procedures were deemed to be insufficient. The therapists mostly felt confident about how to proceed when they suspected or detected CSA, yet they seldom detected CSA. In their initial assessment they applied standardised procedures, but if their suspicion of possible CSA persisted, they seemed to rely more on clinical judgement. Specific challenges and facilitators for CSA detection were identified, both in the individual and in the organisation.
    CONCLUSIONS: The study highlights the challenges and complexities healthcare professionals and the CAP system face when assessing CSA, which may account for the low detection rate. The results show that healthcare professionals believe room for clinical autonomy and targeted competence development may improve CSA detection. Additionally, the findings suggest a need for CAP to define roles and responsibilities within and between agencies.
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  • 文章类型: Journal Article
    注意力缺陷/多动障碍(ADHD)是最常见和可遗传的神经发育障碍之一,可能持续一生。先前编写了一份关于土耳其青年多动症诊断和管理的共识报告。然而,与会者和管理选择相当有限,过去十年的发展需要修订和更新共识。因此,本综述旨在总结Türkiye儿童和青少年精神科医生对儿童ADHD的性质和管理的共识。为了这些目标,多动症的病因,诊断和评估过程,流行病学,发展演讲,鉴别诊断和合并症,我们回顾了课程/结局和药理学以及非药理学管理方案,并提出了临床实践建议.由于ADHD是一种对功能有广泛影响的慢性疾病,经常伴有其他精神障碍,建议采用多维治疗方法.然而,因为这种疾病有神经生物学基础,药物治疗是治疗的主要手段。其他疗法可能包括心理社会疗法,行为疗法,以学校为基础的治疗方法,和家庭教育。本综述在国家和全球层面为多动症提供了建议。它包含有关ADHD的信息,这些信息将有助于并促进临床医生的决策过程。建议在临床实践中考虑该指南。
    Attention Deficit/Hyperactivity Disorder (ADHD) is one of the most common and heritable neurodevelopmental disorders which may last through the life-span. A consensus report on diagnosis and management of ADHD among Turkish youth was prepared previously. However, the participants as well as the management options were rather limited and developments in the past decade necessitated a revision and update of the consensus. Therefore, this review aims to summarize the consensus among Child and Adolescent Psychiatrists from Türkiye on the nature and management of pediatric ADHD. For those aims, the etiology of ADHD, diagnostic and evaluation process, epidemiology, developmental presentations, differential diagnoses and comorbidities, course/outcome and pharmacological as well as non-pharmacological management options were reviewed and suggestions for clinical practice are presented. Since ADHD is a chronic disorder with wide-ranging effects on functionality that is frequently accompanied by other mental disorders, a multidimensional therapeutic approach is recommended. However, since the disorder has neurobiological basis, pharmacotherapy represents the mainstay of treatment. Additional therapies may include psychosocial therapy, behavioral therapy, school-based therapeutic approaches, and family education. This review provides recommendations for ADHD at the national and global levels. It contains information about ADHD that will contribute to and facilitate clinicians\' decision-making processes. It is advisable to consider this guideline in clinical practice.
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  • 文章类型: Journal Article
    背景:对新兴传染病的实时监测需要动态发展,可计算的案例定义,经常包含与症状相关的标准。对于症状检测,人口健康监测平台和研究计划都主要依赖于从电子健康记录中提取的结构化数据。
    目的:本研究旨在验证和测试基于人工智能(AI)的自然语言处理(NLP)管道,用于检测儿科患者的医生记录中的COVID-19症状。我们专门研究到急诊科(ED)就诊的患者,这些患者可能是暴发中的前哨病例。
    方法:这项回顾性队列研究的受试者是21岁及以下的患者,他在2020年3月1日至2022年5月31日期间在一家大型学术儿童医院接受儿科ED治疗。根据疾病控制和预防中心(CDC)标准,所有患者的ED注释都用NLP管道处理,以检测11种COVID-19症状的提及。对于黄金标准,3位主题专家标记了226个ED注释,并且具有很强的一致性(F1评分=0.986;阳性预测值[PPV]=0.972;灵敏度=1.0)。F1分数,PPV,和敏感性用于比较NLP和国际疾病分类的性能,第10次修订(ICD-10)编码为黄金标准图表审查。作为形成性用例,在SARS-CoV-2变种时代测量了症状模式的变化。
    结果:在研究期间有85,678次ED发作,包括4%(n=3420)的COVID-19患者。NLP在识别与有任何COVID-19症状(F1评分=0.796)的患者的相遇方面比ICD-10代码(F1评分=0.451)更准确。阳性症状的NLP准确性(敏感性=0.930)高于ICD-10(敏感性=0.300)。然而,阴性症状(特异性=0.994)的ICD-10准确性高于NLP(特异性=0.917)。充血或流鼻涕显示出最高的准确性差异(NLP:F1评分=0.828,ICD-10:F1评分=0.042)。对于与COVID-19患者的接触,每种NLP症状的患病率估计在不同的时代有所不同。与没有这种疾病的患者相比,患有COVID-19的患者更有可能检测到每种NLP症状。影响大小(赔率比)在大流行时代有所不同。
    结论:这项研究确立了基于AI的NLP作为儿科患者实时检测COVID-19症状的高效工具的价值,优于传统的ICD-10方法。它还揭示了不同病毒变体中症状流行的演变性质,强调了对动态的需求,传染病监测中的技术驱动方法。
    BACKGROUND: Real-time surveillance of emerging infectious diseases necessitates a dynamically evolving, computable case definition, which frequently incorporates symptom-related criteria. For symptom detection, both population health monitoring platforms and research initiatives primarily depend on structured data extracted from electronic health records.
    OBJECTIVE: This study sought to validate and test an artificial intelligence (AI)-based natural language processing (NLP) pipeline for detecting COVID-19 symptoms from physician notes in pediatric patients. We specifically study patients presenting to the emergency department (ED) who can be sentinel cases in an outbreak.
    METHODS: Subjects in this retrospective cohort study are patients who are 21 years of age and younger, who presented to a pediatric ED at a large academic children\'s hospital between March 1, 2020, and May 31, 2022. The ED notes for all patients were processed with an NLP pipeline tuned to detect the mention of 11 COVID-19 symptoms based on Centers for Disease Control and Prevention (CDC) criteria. For a gold standard, 3 subject matter experts labeled 226 ED notes and had strong agreement (F1-score=0.986; positive predictive value [PPV]=0.972; and sensitivity=1.0). F1-score, PPV, and sensitivity were used to compare the performance of both NLP and the International Classification of Diseases, 10th Revision (ICD-10) coding to the gold standard chart review. As a formative use case, variations in symptom patterns were measured across SARS-CoV-2 variant eras.
    RESULTS: There were 85,678 ED encounters during the study period, including 4% (n=3420) with patients with COVID-19. NLP was more accurate at identifying encounters with patients that had any of the COVID-19 symptoms (F1-score=0.796) than ICD-10 codes (F1-score =0.451). NLP accuracy was higher for positive symptoms (sensitivity=0.930) than ICD-10 (sensitivity=0.300). However, ICD-10 accuracy was higher for negative symptoms (specificity=0.994) than NLP (specificity=0.917). Congestion or runny nose showed the highest accuracy difference (NLP: F1-score=0.828 and ICD-10: F1-score=0.042). For encounters with patients with COVID-19, prevalence estimates of each NLP symptom differed across variant eras. Patients with COVID-19 were more likely to have each NLP symptom detected than patients without this disease. Effect sizes (odds ratios) varied across pandemic eras.
    CONCLUSIONS: This study establishes the value of AI-based NLP as a highly effective tool for real-time COVID-19 symptom detection in pediatric patients, outperforming traditional ICD-10 methods. It also reveals the evolving nature of symptom prevalence across different virus variants, underscoring the need for dynamic, technology-driven approaches in infectious disease surveillance.
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  • 文章类型: Journal Article
    背景:数字疾病检测系统的激增导致早期警告信号的增加,随后对新出现的威胁做出了更快的反应。这种高度敏感的系统也会产生微弱的信号,需要额外的信息才能采取行动。对真正健康威胁的响应延迟通常是由于验证健康事件所需的时间。爆发验证的延迟是创建EpiCore的主要动力。
    目标:本文描述了通过EpiCore进行众包信息的潜力,一个自愿的人类网络,动物,和环境卫生专业人员支持核查潜在疫情的早期预警信号,并通过监测持续威胁为风险评估提供信息。
    方法:本文使用汇总统计数据来评估EpiCore是否达到了其目标,即加快验证来自世界各地的流行病和大流行情报目的的潜在健康事件的时间。对EpiCore平台2018年1月至2022年12月的数据进行了分析,以获取信息响应率和验证率的请求。提供了说明性用例,以描述EpiCore成员如何提供信息,以促进对潜在爆发的预警信号的验证,以及通过EpiCore及其实用程序对正在进行的威胁进行监控和风险评估。
    结果:自2016年推出以来,EpiCore网络会员人数在头两年内增加到3300多人,由人类专业人士组成,动物,和环境健康,跨越161个国家。在2018年至2022年期间,EpiCore对信息请求的总体响应率从65.4%上升到68.8%,初始响应通常在24小时内收到(2022年,94%的响应请求在24小时内收到了第一笔贡献)。五个示例用例突出了EpiCore的各种用途。
    结论:随着全球对促进疾病预防和控制的数据需求持续增长,对于传统和非传统的疾病监测方法来说,合作以确保更早地捕获健康威胁至关重要。EpiCore是一种创新方法,可以在与官方早期发现和验证系统互补使用时支持卫生当局的决策。EpiCore可以通过确认早期检测信号来缩短验证时间,告知风险评估活动,并监控正在发生的事件。
    BACKGROUND: The proliferation of digital disease-detection systems has led to an increase in earlier warning signals, which subsequently have resulted in swifter responses to emerging threats. Such highly sensitive systems can also produce weak signals needing additional information for action. The delays in the response to a genuine health threat are often due to the time it takes to verify a health event. It was the delay in outbreak verification that was the main impetus for creating EpiCore.
    OBJECTIVE: This paper describes the potential of crowdsourcing information through EpiCore, a network of voluntary human, animal, and environmental health professionals supporting the verification of early warning signals of potential outbreaks and informing risk assessments by monitoring ongoing threats.
    METHODS: This paper uses summary statistics to assess whether EpiCore is meeting its goal to accelerate the time to verification of identified potential health events for epidemic and pandemic intelligence purposes from around the world. Data from the EpiCore platform from January 2018 to December 2022 were analyzed to capture request for information response rates and verification rates. Illustrated use cases are provided to describe how EpiCore members provide information to facilitate the verification of early warning signals of potential outbreaks and for the monitoring and risk assessment of ongoing threats through EpiCore and its utilities.
    RESULTS: Since its launch in 2016, EpiCore network membership grew to over 3300 individuals during the first 2 years, consisting of professionals in human, animal, and environmental health, spanning 161 countries. The overall EpiCore response rate to requests for information increased by year between 2018 and 2022 from 65.4% to 68.8% with an initial response typically received within 24 hours (in 2022, 94% of responded requests received a first contribution within 24 h). Five illustrated use cases highlight the various uses of EpiCore.
    CONCLUSIONS: As the global demand for data to facilitate disease prevention and control continues to grow, it will be crucial for traditional and nontraditional methods of disease surveillance to work together to ensure health threats are captured earlier. EpiCore is an innovative approach that can support health authorities in decision-making when used complementarily with official early detection and verification systems. EpiCore can shorten the time to verification by confirming early detection signals, informing risk-assessment activities, and monitoring ongoing events.
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  • 文章类型: Journal Article
    纳米针掺硼金刚石(NNBDD)薄膜在Pb2测定中用作电极时可提高其性能。基于对金刚石生长模式和金刚石与非金刚石碳之比的研究,我们开发了一种简单而经济的生产NNBDD的路线,而不涉及任何模板。对于NNBDD膜,可实现表面积的增加。通过扫描电子显微镜对NNBDD电极进行了表征,拉曼光谱,X射线衍射,循环伏安法,电化学阻抗谱,和差分脉冲阳极溶出伏安法(DPASV)。此外,我们使用有限元数值方法来研究尖端增强电场在低Pb2浓度下灵敏检测的前景。NNBDD具有明显的优势和良好的导电性,可用于通过DPASV检测痕量Pb2。在沉积前积累条件下,实现了1至80µgL-1的宽线性范围。Pb2+的检测限为0.32μgL-1,这表明了对重金属离子的灵敏检测的巨大潜力。
    Nano-needle boron-doped diamond (NNBDD) films increase their performance when used as electrodes in the determination of Pb2+. We develop a simple and economical route to produce NNBDD based on the investigation of the diamond growth mode and the ratio of diamond to non-diamond carbon without involving any templates. An enhancement in surface area is achievable for NNBDD film. The NNBDD electrodes are characterized through scanning electron microscopy, Raman spectroscopy, X-ray diffraction, cyclic voltammetry, electrochemical impedance spectroscopy, and differential pulse anodic stripping voltammetry (DPASV). Furthermore, we use a finite-element numerical method to research the prospects of tip-enhanced electric fields for sensitive detection at low Pb2+ concentrations. The NNBDD exhibits significant advantages and great electrical conductivity and is applied to detect trace Pb2+ through DPASV. Under pre-deposition accumulation conditions, a wide linear range from 1 to 80 µgL-1 is achieved. A superior detection limit of 0.32 µgL-1 is achieved for Pb2+, which indicates great potential for the sensitive detection of heavy metal ions.
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