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In-House Intraoperative Monitoring in Neurosurgery in England – Benefits and Challenges 英国神经外科术中内部监控 - 优势与挑战
IF 5.3 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-02-22 DOI: 10.1007/s10916-024-02041-7
Menaka Pasangy Paranathala, Stephan Jaiser, Mohammed Akbar Hussain, Ana Mirallave-Pescador, Christopher J. A. Cowie, Mark R. Baker, Damian Holliman, Charles Alexander Fry

Background

Intraoperative neurophysiological monitoring (IOM) is a valuable adjunct for neurosurgical operative techniques, and has been shown to improve clinical outcomes in cranial and spinal surgery. It is not necessarily provided by NHS hospitals so may be outsourced to private companies, which are expensive and at cost to the NHS trusts. We discuss the benefits and challenges of developing an in-house service.

Methods

We surveyed NHS neurosurgical departments across England regarding their expenditure on IOM over the period January 2018 – December 2022 on cranial neurosurgery and spinal surgery. Out of 24 units, all responded to our Freedom of Information requests and 21 provided data. The standard NHS England salary of NHS staff who would normally be involved in IOM, including physiologists and doctors, was also compiled for comparison.

Results

The total spend on outsourced IOM, across the units who responded, was over £8 million in total for the four years. The annual total increased, between 2018 and 2022, from £1.1 to £3.5 million. The highest single unit yearly spend was £568,462. This is in addition to salaries for staff in neurophysiology departments. The mean NHS salaries for staff is also presented.

Conclusion

IOM is valuable in surgical decision-making, planning, and technique, having been shown to lead to fewer patient complications and shorter length of stay. Current demand for IOM outstrips the internal NHS provision in many trusts across England, leading to outsourcing to private companies. This is at significant cost to the NHS. Although there is a learning curve, there are many benefits to in-house provision, such as stable working relationships, consistent methods, training of the future IOM workforce, and reduced long-term costs, which planned expansion of NHS services may provide.

背景术中神经电生理监测(IOM)是神经外科手术技术的重要辅助手段,已被证明可以改善颅脑和脊柱手术的临床效果。它不一定由 NHS 医院提供,因此可能会外包给私营公司,而私营公司价格昂贵,NHS 信托公司需要承担费用。我们讨论了发展内部服务的益处和挑战。方法我们调查了英格兰各地的NHS神经外科部门在2018年1月至2022年12月期间在颅神经外科和脊柱外科方面的IOM支出情况。在24个单位中,所有单位都回应了我们的信息自由请求,其中21个单位提供了数据。我们还编制了英国国家医疗服务系统(NHS)中通常会参与IOM工作的人员(包括生理学家和医生)的标准薪资,以进行比较。2018年至2022年期间,年度总额从110万英镑增至350万英镑。单个单位最高的年度支出为 568 462 英镑。这还不包括神经生理学部门工作人员的工资。结论IOM在手术决策、规划和技术方面具有重要价值,已被证明可减少患者并发症和缩短住院时间。目前,英国许多信托机构对 IOM 的需求超过了英国国家医疗服务系统(NHS)的内部供应,导致外包给私营公司。这给国家医疗服务体系带来了巨大的成本。虽然这需要一段学习曲线,但内部提供服务有许多好处,例如稳定的工作关系、一致的方法、培训未来的 IOM 劳动力以及降低长期成本,而计划中的 NHS 服务扩展可能会提供这些好处。
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引用次数: 0
The Breakthrough of Large Language Models Release for Medical Applications: 1-Year Timeline and Perspectives. 大型语言模型在医疗应用中的突破:1 年时间表与展望。
IF 5.3 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-02-17 DOI: 10.1007/s10916-024-02045-3
Marco Cascella, Federico Semeraro, Jonathan Montomoli, Valentina Bellini, Ornella Piazza, Elena Bignami

Within the domain of Natural Language Processing (NLP), Large Language Models (LLMs) represent sophisticated models engineered to comprehend, generate, and manipulate text resembling human language on an extensive scale. They are transformer-based deep learning architectures, obtained through the scaling of model size, pretraining of corpora, and computational resources. The potential healthcare applications of these models primarily involve chatbots and interaction systems for clinical documentation management, and medical literature summarization (Biomedical NLP). The challenge in this field lies in the research for applications in diagnostic and clinical decision support, as well as patient triage. Therefore, LLMs can be used for multiple tasks within patient care, research, and education. Throughout 2023, there has been an escalation in the release of LLMs, some of which are applicable in the healthcare domain. This remarkable output is largely the effect of the customization of pre-trained models for applications like chatbots, virtual assistants, or any system requiring human-like conversational engagement. As healthcare professionals, we recognize the imperative to stay at the forefront of knowledge. However, keeping abreast of the rapid evolution of this technology is practically unattainable, and, above all, understanding its potential applications and limitations remains a subject of ongoing debate. Consequently, this article aims to provide a succinct overview of the recently released LLMs, emphasizing their potential use in the field of medicine. Perspectives for a more extensive range of safe and effective applications are also discussed. The upcoming evolutionary leap involves the transition from an AI-powered model primarily designed for answering medical questions to a more versatile and practical tool for healthcare providers such as generalist biomedical AI systems for multimodal-based calibrated decision-making processes. On the other hand, the development of more accurate virtual clinical partners could enhance patient engagement, offering personalized support, and improving chronic disease management.

在自然语言处理(NLP)领域,大型语言模型(LLMs)代表着复杂的模型,这些模型经过精心设计,能够理解、生成和处理大规模的类似人类语言的文本。它们是基于转换器的深度学习架构,通过扩大模型规模、预训练语料库和计算资源来实现。这些模型的潜在医疗应用主要涉及用于临床文档管理的聊天机器人和交互系统,以及医学文献摘要(生物医学 NLP)。该领域的挑战在于诊断和临床决策支持以及患者分流方面的应用研究。因此,LLM 可用于病人护理、研究和教育等多项任务。在整个 2023 年,LLM 的发布量不断攀升,其中一些适用于医疗保健领域。这种引人注目的成果在很大程度上是为聊天机器人、虚拟助手或任何需要类人对话参与的系统等应用定制预训练模型的结果。作为医疗保健专业人士,我们认识到必须走在知识的前沿。然而,紧跟这项技术的快速发展实际上是不可能的,最重要的是,了解其潜在应用和局限性仍然是一个持续争论的话题。因此,本文旨在简明扼要地概述最近发布的 LLM,强调其在医学领域的潜在用途。文章还讨论了更广泛的安全有效应用前景。即将到来的进化飞跃包括从主要用于回答医疗问题的人工智能模型过渡到医疗服务提供者的更通用、更实用的工具,如用于基于多模态校准决策过程的通用生物医学人工智能系统。另一方面,开发更准确的虚拟临床合作伙伴可以提高患者参与度,提供个性化支持,改善慢性病管理。
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引用次数: 0
Text-Mining and Video Analytics of COVID-19 Narratives Shared by Patients on YouTube. 对患者在 YouTube 上分享的 COVID-19 叙述进行文本挖掘和视频分析。
IF 5.3 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-02-15 DOI: 10.1007/s10916-024-02047-1
Ranganathan Chandrasekaran, Karthik Konaraddi, Sakshi S Sharma, Evangelos Moustakas

This study explores how individuals who have experienced COVID-19 share their stories on YouTube, focusing on the nature of information disclosure, public engagement, and emotional impact pertaining to consumer health. Using a dataset of 186 YouTube videos, we used text mining and video analytics techniques to analyze textual transcripts and visual frames to identify themes, emotions, and their relationship with viewer engagement metrics. Findings reveal eight key themes: infection origins, symptoms, treatment, mental well-being, isolation, prevention, government directives, and vaccination. While viewers engaged most with videos about infection origins, treatment, and vaccination, fear and sadness in the text consistently drove views, likes, and comments. Visuals primarily conveyed happiness and sadness, but their influence on engagement varied. This research highlights the crucial role YouTube plays in disseminating COVID-19 patient narratives and suggests its potential for improving health communication strategies. By understanding how emotions and content influence viewer engagement, healthcare professionals and public health officials can tailor their messaging to better connect with the public and address pandemic-related anxieties.

本研究探讨了经历过 COVID-19 的个人如何在 YouTube 上分享他们的故事,重点关注与消费者健康相关的信息披露、公众参与和情感影响的性质。利用 186 个 YouTube 视频的数据集,我们使用文本挖掘和视频分析技术来分析文本转录和视觉框架,以确定主题、情感及其与观众参与度指标之间的关系。研究结果揭示了八个关键主题:感染起源、症状、治疗、心理健康、隔离、预防、政府指令和疫苗接种。观众参与度最高的是关于感染起源、治疗和疫苗接种的视频,而文字中的恐惧和悲伤则始终推动着浏览量、点赞和评论。视觉效果主要传达快乐和悲伤,但它们对参与度的影响各不相同。这项研究强调了 YouTube 在传播 COVID-19 患者叙述方面发挥的关键作用,并提出了 YouTube 在改进健康传播策略方面的潜力。通过了解情绪和内容如何影响观众的参与度,医疗保健专业人员和公共卫生官员可以定制他们的信息,以便更好地与公众沟通,消除与大流行病相关的焦虑。
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引用次数: 0
Artificial Intelligence in Operating Room Management. 人工智能在手术室管理中的应用。
IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-02-14 DOI: 10.1007/s10916-024-02038-2
Valentina Bellini, Michele Russo, Tania Domenichetti, Matteo Panizzi, Simone Allai, Elena Giovanna Bignami

This systematic review examines the recent use of artificial intelligence, particularly machine learning, in the management of operating rooms. A total of 22 selected studies from February 2019 to September 2023 are analyzed. The review emphasizes the significant impact of AI on predicting surgical case durations, optimizing post-anesthesia care unit resource allocation, and detecting surgical case cancellations. Machine learning algorithms such as XGBoost, random forest, and neural networks have demonstrated their effectiveness in improving prediction accuracy and resource utilization. However, challenges such as data access and privacy concerns are acknowledged. The review highlights the evolving nature of artificial intelligence in perioperative medicine research and the need for continued innovation to harness artificial intelligence's transformative potential for healthcare administrators, practitioners, and patients. Ultimately, artificial intelligence integration in operative room management promises to enhance healthcare efficiency and patient outcomes.

这篇系统性综述研究了人工智能,尤其是机器学习在手术室管理中的最新应用。共选取了 22 项从 2019 年 2 月到 2023 年 9 月的研究进行分析。综述强调了人工智能在预测手术病例持续时间、优化麻醉后护理单元资源分配以及检测手术病例取消等方面的重大影响。XGBoost、随机森林和神经网络等机器学习算法在提高预测准确性和资源利用率方面已显示出其有效性。然而,数据访问和隐私问题等挑战也得到了认可。综述强调了围手术期医学研究中人工智能不断发展的性质,以及利用人工智能的变革潜力为医疗管理者、从业人员和患者提供持续创新的必要性。最终,将人工智能融入手术室管理有望提高医疗效率,改善患者预后。
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引用次数: 0
An mHealth Application in German Health Care System: Importance of User Participation in the Development Process. 德国医疗保健系统中的移动医疗应用:用户参与开发过程的重要性。
IF 5.3 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-02-14 DOI: 10.1007/s10916-024-02042-6
Peter Bickmann, Ingo Froböse, Christopher Grieben

This paper addresses the challenges and solutions in developing a holistic prevention mobile health application (mHealth app) for Germany's healthcare sector. Despite Germany's lag in healthcare digitalization, the app aims to enhance primary prevention in physical activity, nutrition, and stress management. A significant focus is on user participation and usability to counter the prevalent issue of user attrition in mHealth applications, as described by Eysenbach's 'law of attrition'. The development process, conducted in a scientific and university context, faces constraints like limited budgets and external service providers. The study firstly presents the structure and functionality of the app for people with statutory health insurance in Germany and secondly the implementation of user participation through a usability study. User participation is executed via usability tests, particularly the think-aloud method, where users verbalize their thoughts while using the app. This approach has proven effective in identifying and resolving usability issues, although some user feedback could not be implemented due to cost-benefit considerations. The implementation of this study into the development process was able to show that user participation, facilitated by methods like think-aloud, is vital for developing mHealth apps. Especially in health prevention, where long-term engagement is a challenge. The findings highlight the importance of allocating time and resources for user participation in the development of mHealth applications.

本文探讨了为德国医疗保健部门开发整体预防移动医疗应用程序(mHealth 应用程序)所面临的挑战和解决方案。尽管德国在医疗保健数字化方面比较落后,但该应用旨在加强体育锻炼、营养和压力管理方面的初级预防。用户参与和可用性是重点,以应对艾森巴赫的 "损耗定律 "所描述的移动医疗应用程序中普遍存在的用户损耗问题。在科学和大学背景下进行的开发过程面临着预算有限和外部服务提供商等制约因素。本研究首先介绍了面向德国法定医疗保险用户的应用程序的结构和功能,其次介绍了通过可用性研究实现用户参与的情况。用户参与是通过可用性测试来实现的,特别是通过 "思考--大声说 "的方法,即用户在使用应用程序时说出自己的想法。事实证明,这种方法在发现和解决可用性问题方面非常有效,尽管由于成本效益方面的考虑,有些用户反馈无法实施。这项研究在开发过程中的实施表明,在 "大声思考 "等方法的推动下,用户参与对于开发移动医疗应用程序至关重要。特别是在健康预防方面,长期参与是一项挑战。研究结果强调了在开发移动医疗应用程序时为用户参与分配时间和资源的重要性。
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引用次数: 0
Measuring the Coverage of the HL7® FHIR® Standard in Supporting Data Acquisition for 3 Public Health Registries. 衡量 HL7® FHIR® 标准在支持 3 个公共卫生登记数据采集方面的覆盖范围。
IF 5.3 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-02-08 DOI: 10.1007/s10916-023-02033-z
Manju Bikkanuri, Taiquitha T Robins, Lori Wong, Emel Seker, Melody L Greer, Tremaine B Williams, Maryam Y Garza

With the increasing need for timely submission of data to state and national public health registries, current manual approaches to data acquisition and submission are insufficient. In clinical practice, federal regulations are now mandating the use of data messaging standards, i.e., the Health Level Seven (HL7®) Fast Healthcare Interoperability Resources (FHIR®) standard, to facilitate the electronic exchange of clinical (patient) data. In both research and public health practice, we can also leverage FHIR® ‒ and the infrastructure already in place for supporting exchange of clinical practice data ‒ to enable seamless exchange between the electronic medical record and public health registries. That said, in order to understand the current utility of FHIR® for supporting the public health use case, we must first measure the extent to which the standard resources map to the required registry data elements. Thus, using a systematic mapping approach, we evaluated the level of completeness of the FHIR® standard to support data collection for three public health registries (Trauma, Stroke, and National Surgical Quality Improvement Program). On average, approximately 80% of data elements were available in FHIR® (71%, 77%, and 92%, respectively; inter-annotator agreement rates: 82%, 78%, and 72%, respectively). This tells us that there is the potential for significant automation to support EHR-to-Registry data exchange, which will reduce the amount of manual, error-prone processes and ensure higher data quality. Further, identification of the remaining 20% of data elements that are "not mapped" will enable us to improve the standard and develop profiles that will better fit the registry data model.

随着向州和国家公共卫生登记处及时提交数据的需求日益增加,目前手动获取和提交数据的方法已不能满足需要。在临床实践中,联邦法规现在强制要求使用数据报文标准,即健康七级(HL7®)快速医疗互操作性资源(FHIR®)标准,以促进临床(患者)数据的电子交换。在研究和公共卫生实践中,我们还可以利用 FHIR® 和支持临床实践数据交换的现有基础设施,实现电子病历和公共卫生登记之间的无缝交换。也就是说,为了了解 FHIR® 目前在支持公共卫生用例方面的效用,我们必须首先衡量标准资源与所需登记数据元素的映射程度。因此,我们使用系统映射法评估了 FHIR® 标准支持三个公共卫生登记处(创伤、中风和国家外科质量改进计划)数据收集的完整程度。平均而言,约 80% 的数据元素在 FHIR® 中可用(分别为 71%、77% 和 92%;标注者之间的一致率分别为 82%、78% 和 72%):注释者之间的一致率分别为 82%、78% 和 72%)。这告诉我们,在支持电子病历到注册表的数据交换方面,有很大的自动化潜力,这将减少手工操作和容易出错的流程,并确保更高的数据质量。此外,识别剩余 20% 的 "未映射 "数据元素将使我们能够改进标准并开发更适合登记处数据模型的配置文件。
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引用次数: 0
ChatGPT for Parents of Children Seeking Emergency Care - so much Hope, so much Caution. 给寻求紧急护理的儿童家长的 ChatGPT - 希望如此之大,谨慎如此之多。
IF 5.3 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-02-02 DOI: 10.1007/s10916-024-02036-4
Julie Yu, Clyde Matava
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引用次数: 0
Adoption and Sustained Use of Primary Care Video Visits Among Veterans with VA Video-Enabled Tablets. 退伍军人使用退伍军人事务部视频平板电脑进行初级保健视频就诊的采用和持续使用情况。
IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-01-30 DOI: 10.1007/s10916-024-02035-5
Zainub Dhanani, Jacqueline M Ferguson, James Van Campen, Cindie Slightam, Leonie Heyworth, Donna M Zulman

In 2020, the U.S. Department of Veterans Affairs (VA) expanded an initiative to distribute video-enabled tablets to Veterans with limited virtual care access. We examined patient characteristics associated with adoption and sustained use of video-based primary care among Veterans. We conducted a retrospective cohort study of Veterans who received VA-issued tablets between 3/11/2020-9/10/2020. We used generalized linear models to evaluate the sociodemographic and clinical factors associated with video-based primary care adoption (i.e., likelihood of having a primary care video visit) and sustained use (i.e., rate of video care) in the six months after a Veteran received a VA-issued tablet. Of the 36,077 Veterans who received a tablet, 69% had at least one video-based visit within six months, and 24% had a video-based visit in primary care. Veterans with a history of housing instability or a mental health condition, and those meeting VA enrollment criteria for low-income were significantly less likely to adopt video-based primary care. However, among Veterans who had a video visit in primary care (e.g., those with at least one video visit), older Veterans, and Veterans with a mental health condition had more sustained use (higher rate) than younger Veterans or those without a mental health condition. We found no differences in adoption of video-based primary care by rurality, age, race, ethnicity, or low/moderate disability and high disability priority groups compared to Veterans with no special enrollment category. VA's tablet initiative has supported many Veterans with complex needs in accessing primary care by video. While Veterans with certain social and clinical challenges were less likely to have a video visit, those who adopted video telehealth generally had similar or higher rates of sustained use. These patterns suggest opportunities for tailored interventions that focus on needs specific to initial uptake vs. sustained use of video care.

2020 年,美国退伍军人事务部(VA)扩大了一项计划,向虚拟医疗服务有限的退伍军人发放视频平板电脑。我们研究了退伍军人中采用和持续使用基于视频的初级保健的相关患者特征。我们对在 2020 年 11 月 3 日至 2020 年 10 月 9 日期间接受退伍军人管理局发放的平板电脑的退伍军人进行了一项回顾性队列研究。我们使用广义线性模型评估了退伍军人在收到退伍军人事务部发放的平板电脑后六个月内采用视频初级保健(即进行初级保健视频就诊的可能性)和持续使用(即视频保健率)的相关社会人口和临床因素。在领取平板电脑的 36077 名退伍军人中,69% 的人在 6 个月内至少接受过一次视频就诊,24% 的人接受过一次初级保健视频就诊。有住房不稳定史或精神健康状况的退伍军人以及符合退伍军人管理局低收入登记标准的退伍军人采用视频初级保健的可能性要低得多。然而,在接受过初级保健视频就诊的退伍军人中(例如至少接受过一次视频就诊的退伍军人),年龄较大的退伍军人和患有精神疾病的退伍军人比年轻退伍军人或没有精神疾病的退伍军人更能持续使用视频就诊(使用率更高)。我们发现,与无特殊登记类别的退伍军人相比,不同地区、年龄、种族、民族或低/中度残疾和高度残疾优先群体在采用基于视频的初级保健方面没有差异。退伍军人事务部的平板电脑计划为许多有复杂需求的退伍军人通过视频获得初级保健提供了支持。虽然面临某些社会和临床挑战的退伍军人不太可能进行视频就诊,但那些采用视频远程保健的退伍军人一般都有类似或更高的持续使用率。这些模式表明,我们有机会采取量身定制的干预措施,重点关注视频护理的初始接受与持续使用的具体需求。
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引用次数: 0
Multiple Classification of Brain MRI Autism Spectrum Disorder by Age and Gender Using Deep Learning. 利用深度学习按年龄和性别对大脑磁共振成像自闭症谱系障碍进行多重分类。
IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-01-22 DOI: 10.1007/s10916-023-02032-0
Hidir Selcuk Nogay, Hojjat Adeli

The fact that the rapid and definitive diagnosis of autism cannot be made today and that autism cannot be treated provides an impetus to look into novel technological solutions. To contribute to the resolution of this problem through multiple classifications by considering age and gender factors, in this study, two quadruple and one octal classifications were performed using a deep learning (DL) approach. Gender in one of the four classifications and age groups in the other were considered. In the octal classification, classes were created considering gender and age groups. In addition to the diagnosis of ASD (Autism Spectrum Disorders), another goal of this study is to find out the contribution of gender and age factors to the diagnosis of ASD by making multiple classifications based on age and gender for the first time. Brain structural MRI (sMRI) scans of participators with ASD and TD (Typical Development) were pre-processed in the system originally designed for this purpose. Using the Canny Edge Detection (CED) algorithm, the sMRI image data was cropped in the data pre-processing stage, and the data set was enlarged five times with the data augmentation (DA) techniques. The most optimal convolutional neural network (CNN) models were developed using the grid search optimization (GSO) algorism. The proposed DL prediction system was tested with the five-fold cross-validation technique. Three CNN models were designed to be used in the system. The first of these models is the quadruple classification model created by taking gender into account (model 1), the second is the quadruple classification model created by taking into account age (model 2), and the third is the eightfold classification model created by taking into account both gender and age (model 3). ). The accuracy rates obtained for all three designed models are 80.94, 85.42 and 67.94, respectively. These obtained accuracy rates were compared with pre-trained models by using the transfer learning approach. As a result, it was revealed that age and gender factors were effective in the diagnosis of ASD with the system developed for ASD multiple classifications, and higher accuracy rates were achieved compared to pre-trained models.

如今无法对自闭症进行快速、明确的诊断,也无法对自闭症进行治疗,这一事实为研究新型技术解决方案提供了动力。为了通过考虑年龄和性别因素的多重分类来解决这一问题,本研究采用深度学习(DL)方法进行了两次四重分类和一次八重分类。四个分类中的一个考虑了性别因素,另一个考虑了年龄段因素。在八进制分类中,则考虑了性别和年龄组别。除了 ASD(自闭症谱系障碍)的诊断,本研究的另一个目标是通过首次根据年龄和性别进行多重分类,找出性别和年龄因素对 ASD 诊断的贡献。ASD 和 TD(典型发育)患者的脑结构磁共振成像(sMRI)扫描图像在最初为此目的设计的系统中进行了预处理。在数据预处理阶段,利用 Canny Edge Detection(CED)算法对 sMRI 图像数据进行裁剪,并利用数据增强(DA)技术将数据集扩大五倍。使用网格搜索优化(GSO)算法开发了最优卷积神经网络(CNN)模型。利用五倍交叉验证技术对所提出的 DL 预测系统进行了测试。该系统设计了三个 CNN 模型。第一个模型是考虑性别因素的四重分类模型(模型 1),第二个模型是考虑年龄因素的四重分类模型(模型 2),第三个模型是考虑性别和年龄因素的八重分类模型(模型 3)。).所有三个设计模型的准确率分别为 80.94、85.42 和 67.94。利用迁移学习方法,将获得的准确率与预先训练的模型进行了比较。结果表明,年龄和性别因素在 ASD 多重分类系统的 ASD 诊断中是有效的,与预先训练的模型相比获得了更高的准确率。
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引用次数: 0
Automated Prediction of Photographic Wound Assessment Tool in Chronic Wound Images. 自动预测慢性伤口图像中的摄影伤口评估工具。
IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2024-01-16 DOI: 10.1007/s10916-023-02029-9
Nico Curti, Yuri Merli, Corrado Zengarini, Michela Starace, Luca Rapparini, Emanuela Marcelli, Gianluca Carlini, Daniele Buschi, Gastone C Castellani, Bianca Maria Piraccini, Tommaso Bianchi, Enrico Giampieri

Many automated approaches have been proposed in literature to quantify clinically relevant wound features based on image processing analysis, aiming at removing human subjectivity and accelerate clinical practice. In this work we present a fully automated image processing pipeline leveraging deep learning and a large wound segmentation dataset to perform wound detection and following prediction of the Photographic Wound Assessment Tool (PWAT), automatizing the clinical judgement of the adequate wound healing. Starting from images acquired by smartphone cameras, a series of textural and morphological features are extracted from the wound areas, aiming to mimic the typical clinical considerations for wound assessment. The resulting extracted features can be easily interpreted by the clinician and allow a quantitative estimation of the PWAT scores. The features extracted from the region-of-interests detected by our pre-trained neural network model correctly predict the PWAT scale values with a Spearman's correlation coefficient of 0.85 on a set of unseen images. The obtained results agree with the current state-of-the-art and provide a benchmark for future artificial intelligence applications in this research field.

文献中提出了许多基于图像处理分析量化临床相关伤口特征的自动化方法,旨在消除人为主观因素,加快临床实践。在这项工作中,我们利用深度学习和大型伤口分割数据集提出了一种全自动图像处理流水线,用于进行伤口检测和摄影伤口评估工具(PWAT)的后续预测,使伤口愈合充分与否的临床判断自动化。从智能手机摄像头获取的图像开始,从伤口区域提取一系列纹理和形态特征,旨在模仿典型的伤口评估临床考虑因素。临床医生可以轻松解读提取的特征,并对 PWAT 分数进行量化估算。在一组未见过的图像上,我们预先训练的神经网络模型从检测到的感兴趣区提取的特征能正确预测 PWAT 量表值,斯皮尔曼相关系数为 0.85。所获得的结果与当前最先进的结果一致,为该研究领域未来的人工智能应用提供了基准。
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引用次数: 0
期刊
Journal of Medical Systems
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