Open Source

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  • 文章类型: Journal Article
    封闭的公共场所是空气传播疾病的热点。从空中传播的角度测量和保持室内空气质量,一个开源,开发了低成本和分布式的颗粒物传感器阵列,并将其命名为室内通风的动态气溶胶运输,或者DATIV,系统。该系统可以同时使用多个颗粒物传感器(PMS),并且可以使用基于RaspberryPi的操作系统进行远程控制。可以使用安装在具有相应IP地址的远程设备(诸如PC或智能电话)上的任何常见浏览器内的GUI来容易地操作数据采集系统。介绍了软件架构和验证措施以及可能的未来发展。
    Enclosed public spaces are hotspots for airborne disease transmission. To measure and maintain indoor air quality in terms of airborne transmission, an open source, low cost and distributed array of particulate matter sensors was developed and named Dynamic Aerosol Transport for Indoor Ventilation, or DATIV, system. This system can use multiple particulate matter sensors (PMSs) simultaneously and can be remotely controlled using a Raspberry Pi-based operating system. The data acquisition system can be easily operated using the GUI within any common browser installed on a remote device such as a PC or smartphone with a corresponding IP address. The software architecture and validation measurements are presented together with possible future developments.
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  • 文章类型: Journal Article
    神经元和神经胶质的树状形态是基本上所有动物的神经系统中回路连通性和代谢功能的关键细胞决定因素。为了阐明特定细胞类型对生理和病理大脑状态的贡献,它是重要的访问详细的神经解剖学数据的定量分析和计算建模。神经形态.Org是免费提供的数字神经重建和相关元数据的最大在线集合,并通过新的上传不断更新。在项目的早期,我们每年一起发布多个数据集,但是这个过程导致数据公开平均延迟了几个月。此外,在过去的5年里,>80%的受邀作者同意通过NeuroMorpho与社区分享他们的数据。Org,高于该项目前5年的<20%。在同一时期,每本出版物的平均重建数量增加了600%,创造了对自动处理的需求,以便在更短的时间内发布更多的重建。我们的管道的逐步自动化使得能够在单个数据集准备就绪后立即过渡到敏捷发布。从数据识别到公共共享的总体时间减少了63.7%;78%的数据集现在在不到3个月的时间内发布,平均工作流持续时间低于40天。此外,每次重建的平均处理时间从3小时下降到2分钟。随着这些不断改进,神经形态.Org努力打造开放数据的积极文化。最重要的是,新的,通过重用世界各地的数据集而实现的原始研究对科学发现产生了倍增效应,有利于作者和用户。
    The tree-like morphology of neurons and glia is a key cellular determinant of circuit connectivity and metabolic function in the nervous system of essentially all animals. To elucidate the contribution of specific cell types to both physiological and pathological brain states, it is important to access detailed neuroanatomy data for quantitative analysis and computational modeling. NeuroMorpho.Org is the largest online collection of freely available digital neural reconstructions and related metadata and is continuously updated with new uploads. Earlier in the project, we released multiple datasets together yearly, but this process caused an average delay of several months in making the data public. Moreover, in the past 5 years, >80% of invited authors agreed to share their data with the community via NeuroMorpho.Org, up from <20% in the first 5 years of the project. In the same period, the average number of reconstructions per publication increased 600%, creating the need for automatic processing to release more reconstructions in less time. The progressive automation of our pipeline enabled the transition to agile releases of individual datasets as soon as they are ready. The overall time from data identification to public sharing decreased by 63.7%; 78% of the datasets are now released in less than 3 months with an average workflow duration below 40 days. Furthermore, the mean processing time per reconstruction dropped from 3 h to 2 min. With these continuous improvements, NeuroMorpho.Org strives to forge a positive culture of open data. Most importantly, the new, original research enabled through reuse of datasets across the world has a multiplicative effect on science discovery, benefiting both authors and users.
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  • 文章类型: Journal Article
    空间转录组学(ST)方法解锁组织发育的分子机制,稳态,或疾病。然而,需要易于使用,高分辨率,成本效益高,和3D可扩展方法。这里,我们报告Open-ST,基于测序的,开源实验和计算资源,以解决这些挑战,并研究二维和三维组织的分子组织。在老鼠的大脑中,开放ST以亚细胞分辨率和重建的细胞类型捕获转录本。在原发性头颈部肿瘤和患者匹配的健康/转移性淋巴结中,开放ST捕获了免疫的多样性,基质,和太空中的肿瘤群体,通过基于成像的ST验证。不同的细胞状态组织在肿瘤中的细胞-细胞通讯热点周围,而不是转移。引人注目的是,转移性淋巴结的3D重建和多模态分析显示,在2D中不可见的空间上连续的结构和精确位于3D肿瘤/淋巴结边界的潜在生物标志物.所有协议和软件均可在https://rajewsky-lab获得。github.io/openst.
    Spatial transcriptomics (ST) methods unlock molecular mechanisms underlying tissue development, homeostasis, or disease. However, there is a need for easy-to-use, high-resolution, cost-efficient, and 3D-scalable methods. Here, we report Open-ST, a sequencing-based, open-source experimental and computational resource to address these challenges and to study the molecular organization of tissues in 2D and 3D. In mouse brain, Open-ST captured transcripts at subcellular resolution and reconstructed cell types. In primary head-and-neck tumors and patient-matched healthy/metastatic lymph nodes, Open-ST captured the diversity of immune, stromal, and tumor populations in space, validated by imaging-based ST. Distinct cell states were organized around cell-cell communication hotspots in the tumor but not the metastasis. Strikingly, the 3D reconstruction and multimodal analysis of the metastatic lymph node revealed spatially contiguous structures not visible in 2D and potential biomarkers precisely at the 3D tumor/lymph node boundary. All protocols and software are available at https://rajewsky-lab.github.io/openst.
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  • 文章类型: Journal Article
    2021年9月,我通过普林斯顿数据空间以CreativeCommons许可证提供了一系列采访笔录供公众使用。采访包括我与AmazonFlex的零工进行的39次对话,Uber,和Lyft在2019年作为这些组织内部自动化工作研究的一部分。我之所以做出这个决定,是因为(1)我被要求为公开可用的数据集做出贡献,作为我资助的要求;(2)我认为这是参与科学技术研究中出现的协作定性科学实验的机会。本文记录了我的思维过程和设计研究的逐步设计决策,收集数据,掩盖它,并将其发布在公共档案中。重要的是,一旦我决定公布这些数据,我决定,关于如何设计和实施这项研究的每个选择都必须以非常慎重的方式评估受访者的风险。这并不意味着要全面,涵盖研究人员在产生定性数据时可能面临的每一种可能的状况。我的目标是在面试数据和收集和发布这些数据的过程中保持透明。我使用这篇文章来说明我的思维过程,因为我为这项研究做出了每个设计决策,希望它对考虑自己的数据发布过程的未来研究人员有用。
    In September 2021 I made a collection of interview transcripts available for public use under a CreativeCommons license through the Princeton DataSpace. The interviews include 39 conversations I had with gig workers at AmazonFlex, Uber, and Lyft in 2019 as part of a study on automation efforts within these organizations. I made this decision because (1) I was required to contribute to a publicly available data set as a requirement of my funding and (2) I saw it as an opportunity to engage in the collaborative qualitative science experiments emerging in Science and Technology studies. This article documents my thought process and step-by-step design decisions for designing a study, gathering data, masking it, and publishing it in a public archive. Importantly, once I decided to publish these data, I determined that each choice about how the study would be designed and implemented had to be assessed for risk to the interviewee in a very deliberate way. It is not meant to be comprehensive and cover every possible condition a researcher may face while producing qualitative data. I aimed to be transparent both in my interview data and the process it took to gather and publish these data. I use this article to illustrate my thought process as I made each design decision for this study in hopes that it could be useful to a future researcher considering their own data publishing process.
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  • 文章类型: Journal Article
    背景:当前活动跟踪器中的运动确定软件的准确性不足以用于科学应用,它们也不是开源的。
    目标:为了解决这个问题,我们开发了一种精确的,可训练,以及基于智能手机的开源活动跟踪工具箱,该工具箱由一个Android应用程序(HumanActivityRecorder)和2种可以适应新行为的不同深度学习算法组成。
    方法:我们采用了一种半监督深度学习方法,基于加速度测量和陀螺仪数据来识别不同类别的活动。使用我们自己的数据和开放的竞争数据。
    结果:我们的方法对采样率和传感器尺寸输入的变化具有鲁棒性,在对我们自己记录的数据和MotionSense数据的6种不同行为进行分类时,准确率约为87%。然而,如果在我们自己的数据上测试维度自适应神经架构模型,准确率下降到26%,这证明了我们算法的优越性,它对用于训练维度自适应神经架构模型的MotionSense数据的执行率为63%。
    结论:HumanActivityRecorder是一种多功能,可重新训练,开源,和精确的工具箱,不断测试新的数据。这使研究人员能够适应被测量的行为,并在科学研究中实现可重复性。
    BACKGROUND: The accuracy of movement determination software in current activity trackers is insufficient for scientific applications, which are also not open-source.
    OBJECTIVE: To address this issue, we developed an accurate, trainable, and open-source smartphone-based activity-tracking toolbox that consists of an Android app (HumanActivityRecorder) and 2 different deep learning algorithms that can be adapted to new behaviors.
    METHODS: We employed a semisupervised deep learning approach to identify the different classes of activity based on accelerometry and gyroscope data, using both our own data and open competition data.
    RESULTS: Our approach is robust against variation in sampling rate and sensor dimensional input and achieved an accuracy of around 87% in classifying 6 different behaviors on both our own recorded data and the MotionSense data. However, if the dimension-adaptive neural architecture model is tested on our own data, the accuracy drops to 26%, which demonstrates the superiority of our algorithm, which performs at 63% on the MotionSense data used to train the dimension-adaptive neural architecture model.
    CONCLUSIONS: HumanActivityRecorder is a versatile, retrainable, open-source, and accurate toolbox that is continually tested on new data. This enables researchers to adapt to the behavior being measured and achieve repeatability in scientific studies.
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  • 文章类型: Journal Article
    通过神经元的电生理表型表征神经元对于理解行为和认知功能的神经基础至关重要。技术发展使得能够收集数百个神经记录;这需要能够有效地执行特征提取的新工具。为了解决迫切需要一个强大和可访问的工具,我们开发了ElecFeX,一个基于MATLAB的开源工具箱,(1)具有直观的图形用户界面,(2)提供可定制的测量范围广泛的电生理特征,(3)通过批量分析毫不费力地处理大型数据集,和(4)产生格式化的输出以供进一步分析。我们在一组不同的神经记录上实现了ElecFeX;展示了它的功能,多功能性,以及捕获电特征的效率;并确立了其在区分跨大脑区域和物种的神经元亚群中的意义。因此,ElecFeX被呈现为用户友好的工具箱,通过最大限度地减少从其电生理数据集中提取特征所需的时间来使神经科学社区受益。
    Characterizing neurons by their electrophysiological phenotypes is essential for understanding the neural basis of behavioral and cognitive functions. Technological developments have enabled the collection of hundreds of neural recordings; this calls for new tools capable of performing feature extraction efficiently. To address the urgent need for a powerful and accessible tool, we developed ElecFeX, an open-source MATLAB-based toolbox that (1) has an intuitive graphical user interface, (2) provides customizable measurements for a wide range of electrophysiological features, (3) processes large-size datasets effortlessly via batch analysis, and (4) yields formatted output for further analysis. We implemented ElecFeX on a diverse set of neural recordings; demonstrated its functionality, versatility, and efficiency in capturing electrical features; and established its significance in distinguishing neuronal subgroups across brain regions and species. ElecFeX is thus presented as a user-friendly toolbox to benefit the neuroscience community by minimizing the time required for extracting features from their electrophysiological datasets.
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  • 文章类型: English Abstract
    BACKGROUND: In 2023, the release of ChatGPT triggered an artificial intelligence (AI) boom. The underlying large language models (LLM) of the nonprofit organization \"OpenAI\" are not freely available under open-source licenses, which does not allow on-site implementation inside secure clinic networks. However, efforts are being made by open-source communities, start-ups and large tech companies to democratize the use of LLMs. This opens up the possibility of using LLMs in a data protection-compliant manner and even adapting them to our own data.
    OBJECTIVE: This paper aims to explain the potential of privacy-compliant local LLMs for radiology and to provide insights into the \"open\" versus \"closed\" dynamics of the currently rapidly developing field of AI.
    METHODS: PubMed search for radiology articles with LLMs and subjective selection of references in the sense of a narrative key topic article.
    RESULTS: Various stakeholders, including large tech companies such as Meta, Google and X, but also European start-ups such as Mistral AI, contribute to the democratization of LLMs by publishing the models (open weights) or by publishing the model and source code (open source). Their performance is lower than current \"closed\" LLMs, such as GPT‑4 from OpenAI.
    CONCLUSIONS: Despite differences in performance, open and thus locally implementable LLMs show great promise for improving the efficiency and quality of diagnostic reporting as well as interaction with patients and enable retrospective extraction of diagnostic information for secondary use of clinical free-text databases for research, teaching or clinical application.
    UNASSIGNED: HINTERGRUND: Die Veröffentlichung von ChatGPT löste im Jahr 2023 einen KI-Boom aus. Die zugrundeliegenden großen Sprachmodelle (Large Language Models, LLM) der gemeinnützigen Organisation „OpenAI“ sind nicht frei unter Open-Source-Lizenzen verfügbar, was keine Implementierung vor Ort in gesicherten Kliniknetzen erlaubt. Von Open-Source-Gemeinschaften, Start-ups, aber auch von großen Tech-Firmen gibt es jedoch Bestrebungen, die Anwendung von LLMs zu demokratisieren. Dies bietet die Möglichkeit, LLMs auch datenschutzkonform anzuwenden und sogar auf eigene Daten anzupassen.
    UNASSIGNED: In diesem Beitrag soll das Potenzial von datenschutzkonformen, lokalen LLMs für die Radiologie erläutert und Einblicke in die „open“ versus „closed“ Dynamik der aktuell rasanten Entwicklungen im Bereich künstlicher Intelligenz (KI) gegeben werden.
    METHODS: PubMed-Suche zu radiologischen Artikeln mit LLMs und subjektive Auswahl von Referenzen im Sinne eines narrativen Leitthemenartikels.
    UNASSIGNED: Verschiedene Akteure, darunter große Tech-Firmen wie Meta, Google und X, aber auch europäische Start-ups wie Mistral AI, tragen zur Demokratisierung von LLMs durch Veröffentlichung der Modelles („open weights“) oder durch Veröffentlichung von Modell und Quellcode („open source“) bei. Ihre Performanz ist geringer als aktuelle „closed“ LLMs, wie z. B. GPT‑4 von OpenAI.
    CONCLUSIONS: Trotz Unterschieden in der Performanz zeigen offene und damit lokal implementierbare LLMs großes Potenzial zur Verbesserung der Effizienz und Qualität der Befundung sowie der Interaktion mit Patienten und ermöglichen eine retrospektive Extraktion von Befundinformationen zur Sekundärnutzung klinischer Freitextdatenbanken für Forschung, Lehre oder klinische Anwendung.
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  • 文章类型: Journal Article
    OpenFlexure显微镜是一个可访问的,三维打印机器人显微镜,具有足够的图像质量来解决包括寄生虫和癌细胞在内的诊断特征。由于获得实验室级显微镜是全球医疗保健领域的主要挑战,OpenFlexure显微镜已被开发制造,在远程环境中维护和使用,支持即时诊断。将硬件和软件从学术原型转变为公认的医疗设备所采取的步骤包括解决技术和社会挑战,并且是任何旨在提高低资源医疗保健有效性的创新的关键。这篇文章是西奥·墨菲会议议题的一部分,显微镜的可重复硬件。
    The OpenFlexure Microscope is an accessible, three-dimensional-printed robotic microscope, with sufficient image quality to resolve diagnostic features including parasites and cancerous cells. As access to lab-grade microscopes is a major challenge in global healthcare, the OpenFlexure Microscope has been developed to be manufactured, maintained and used in remote environments, supporting point-of-care diagnosis. The steps taken in transforming the hardware and software from an academic prototype towards an accepted medical device include addressing technical and social challenges, and are key for any innovation targeting improved effectiveness in low-resource healthcare. This article is part of the Theo Murphy meeting issue \'Open, reproducible hardware for microscopy\'.
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  • 文章类型: Journal Article
    在神经监测和解码的交叉点,基于脑电图(EEG)的事件相关电位(ERP)为内在脑功能打开了一个窗口。ERP的稳定性使其在神经科学领域得到了广泛的应用。然而,特定于项目的自定义代码,跟踪用户定义的参数,商业工具的多样性限制了临床应用。
    我们介绍一个开源的,用户友好,和可重复的MATLAB工具箱称为EPAT,包括各种算法的脑电图数据预处理。它提供了基于EEGLAB的模板管道,用于对EEG进行高级多处理,脑磁图,和多导睡眠图数据。参与者评估了EEGLAB和EPAT的14个指标,满意度评分使用Wilcoxon符号秩检验或基于分布正态的配对t检验进行分析。
    EPAT简化了EEG信号浏览和预处理,脑电功率谱分析,独立成分分析,时频分析,ERP波形图,和头皮电压的拓扑分析。用户友好的图形用户界面允许没有编程背景的临床医生和研究人员使用EPAT。
    本文介绍的体系结构,功能,和工具箱的工作流程。EPAT的发布将有助于推进脑电图方法学及其在临床转化研究中的应用。
    UNASSIGNED: At the intersection of neural monitoring and decoding, event-related potential (ERP) based on electroencephalography (EEG) has opened a window into intrinsic brain function. The stability of ERP makes it frequently employed in the field of neuroscience. However, project-specific custom code, tracking of user-defined parameters, and the large diversity of commercial tools have limited clinical application.
    UNASSIGNED: We introduce an open-source, user-friendly, and reproducible MATLAB toolbox named EPAT that includes a variety of algorithms for EEG data preprocessing. It provides EEGLAB-based template pipelines for advanced multi-processing of EEG, magnetoencephalography, and polysomnogram data. Participants evaluated EEGLAB and EPAT across 14 indicators, with satisfaction ratings analyzed using the Wilcoxon signed-rank test or paired t-test based on distribution normality.
    UNASSIGNED: EPAT eases EEG signal browsing and preprocessing, EEG power spectrum analysis, independent component analysis, time-frequency analysis, ERP waveform drawing, and topological analysis of scalp voltage. A user-friendly graphical user interface allows clinicians and researchers with no programming background to use EPAT.
    UNASSIGNED: This article describes the architecture, functionalities, and workflow of the toolbox. The release of EPAT will help advance EEG methodology and its application to clinical translational studies.
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    文章类型: Journal Article
    Medical research uses increasingly massive, complex and interdependent data, the analysis of which requires the use of specialized algorithms. In order to independently reproduce and validate the results of a scientific study, it is no longer sufficient to share the text of the article as an open-access document, together with the raw research data according to the open-data approach. It is now also needed to share the algorithms used to analyze the data with other research teams. Free and open-source software precisely responds to this need to disseminate technical knowledge at a large scale. In this paper, we present several examples of free software used in medicine, with a particular focus on medical imaging.
    La recherche médicale recourt à des données de plus en plus massives, complexes et interdépendantes dont l’analyse nécessite l’usage d’algorithmes spécialisés. Afin de reproduire et valider les résultats d’une étude scientifique de manière indépendante, il n’est, dès lors, plus suffisant de partager le texte de l’article en «open-access» complété avec les données brutes en «open-data». Il convient désormais d’également partager les algorithmes qui ont servi à l’analyse des données avec d’autres équipes de chercheurs. Le logiciel libre et «open-source» répond précisément à ce besoin de diffuser les connaissances techniques à grande échelle. Dans cet article, nous présentons plusieurs exemples de logiciels libres utilisés en médecine, avec une attention particulière portée à l’imagerie médicale.
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