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Metastability in networks of nonlinear stochastic integrate-and-fire neurons. 非线性随机整合-发射神经元网络中的转移性
Pub Date : 2024-12-12
Siddharth Paliwal, Gabriel Koch Ocker, Braden A W Brinkman

Neurons in the brain continuously process the barrage of sensory inputs they receive from the environment. A wide array of experimental work has shown that the collective activity of neural populations encodes and processes this constant bombardment of information. How these collective patterns of activity depend on single-neuron properties is often unclear. Single-neuron recordings have shown that individual neurons' responses to inputs are nonlinear, which prevents a straightforward extrapolation from single neuron features to emergent collective states. Here, we use a field-theoretic formulation of a stochastic leaky integrate-and-fire model to study the impact of single-neuron nonlinearities on macroscopic network activity. In this model, a neuron integrates spiking output from other neurons in its membrane voltage and emits spikes stochastically with an intensity depending on the membrane voltage, after which the voltage resets. We show that the interplay between nonlinear spike intensity functions and membrane potential resets can i) give rise to metastable active firing rate states in recurrent networks, and ii) can enhance or suppress mean firing rates and membrane potentials in the same or paradoxically opposite directions.

大脑中的神经元不断处理从环境中接收到的大量感官输入信息。大量实验工作表明,神经元群的集体活动编码并处理着这种持续不断的信息轰炸。这些集体活动模式如何依赖于单个神经元的特性往往还不清楚。单神经元记录显示,单个神经元对输入的反应是非线性的,这就阻碍了从单神经元特征直接推断出出现的集体状态。在这项工作中,我们使用随机泄漏整合-发射模型的场论表述来研究非线性强度函数对宏观网络活动的影响。我们的研究表明,非线性尖峰发射和膜电位复位之间的相互作用会 i) 引起活跃点燃率状态之间的可迁移转变,以及 ii) 以相反的方向增强或抑制平均点燃率和膜电位。
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引用次数: 0
On the linear scaling of entropy vs. energy in human brain activity, the Hagedorn temperature and the Zipf law. 人脑活动的统计热力学、哈格多恩温度和齐普夫定律。
Pub Date : 2024-12-11
Dante R Chialvo, Romuald A Janik

It is well established that the brain spontaneously traverses through a very large number of states. Nevertheless, despite its relevance to understanding brain function, a formal description of this phenomenon is still lacking. To this end, we introduce a machine learning based method allowing for the determination of the probabilities of all possible states at a given coarse-graining, from which all the thermodynamics can be derived. This is a challenge not unique to the brain, since similar problems are at the heart of the statistical mechanics of complex systems. This paper uncovers a linear scaling of the entropies and energies of the brain states, a behaviour first conjectured by Hagedorn to be typical at the limiting temperature in which ordinary matter disintegrates into quark matter. Equivalently, this establishes the existence of a Zipf law scaling underlying the appearance of a wide range of brain states. Based on our estimation of the density of states for large scale functional magnetic resonance imaging (fMRI) human brain recordings, we observe that the brain operates asymptotically at the Hagedorn temperature. The presented approach is not only relevant to brain function but should be applicable for a wide variety of complex systems.

众所周知,大脑会自发地穿越大量的状态。然而,尽管它与理解大脑功能息息相关,但目前仍缺乏对这一现象的正式描述。为此,我们引入了一种基于机器学习的方法,这种方法可以确定给定粗粒度下所有可能状态的概率,并由此推导出所有热力学。这并不是大脑所独有的挑战,因为类似的问题也是复杂系统统计力学的核心。本文揭示了大脑状态的熵和能量的线性缩放,这种行为最早由海格多恩(Hagedorn)推测,在普通物质解体为夸克物质的极限温度下具有典型性。同样,这也证明了齐普夫定律的存在,它是各种脑状态出现的基础。根据我们对大规模功能磁共振成像(fMRI)人脑记录的状态密度的估计,我们观察到大脑在哈格多恩温度下近似运行。所提出的方法不仅与大脑功能相关,而且应适用于各种复杂系统。
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引用次数: 0
Timing consistency of T cell receptor activation in a stochastic model combining kinetic segregation and proofreading. 结合动力学分离和校对的随机模型中 T 细胞受体激活的时间一致性
Pub Date : 2024-12-09
Thorsten Prüstel, Martin Meier-Schellersheim

T cell receptor signaling must operate reliably under tight time constraints. While assuming quite different mechanisms, two prominent models of T cell receptor activation, kinetic segregation and kinetic proofreading, both introduce a distinct time scale. However, a clear understanding of whether and how those characteristic times give rise to a consistent timing of T cell receptor activation in the presence of stochastic fluctuations has been lacking so far. Here, using a simulation approach capable of modeling molecular interactions between adjacent cell membranes, we explore a stochastic model that combines elements of kinetic segregation and proofreading. Our simulations suggest that the two mechanisms interoperate, thereby rendering the corresponding stochastic times biologically functional. Receptor activation relies on rare molecular events that are not well characterized by the mean of the underlying probability density function. Yet, a consistent timing of receptor activation can be ensured by a modest number of proofreading steps.

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引用次数: 0
Predictive Strategies for the Control of Complex Motor Skills: Recent Insights into Individual and Joint Actions.
Pub Date : 2024-12-05
Marta Russo, Antonella Maselli, Dagmar Sternad, Giovanni Pezzulo

Humans can perform exquisite sensorimotor skills, both individually and in teams, from athletes performing rhythmic gymnastics to everyday tasks like carrying a cup of coffee. The "predictive brain" framework suggests that mastering these tasks relies on predictive mechanisms, raising the question of how we deploy such predictions for real-time control and coordination. This review highlights two lines of research: one showing that during the control of complex objects people make the interaction with 'tools' predictable; the second one examines dyadic coordination showing that people make their behavior predictable for their partners. These studies demonstrate that to achieve sophisticated motor skills, we play "prediction tricks": we select subspaces of predictable solutions and make sensorimotor interactions more predictable and legible by and for others. This synthesis underscores the critical role of predictability in optimizing control strategies across various contexts and establishes a link between predictive processing and closed-loop control theories of behavior.

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引用次数: 0
Brain Morphology Normative modelling platform for abnormality and Centile estimation: Brain MoNoCle. 用于异常和百分位估计的脑形态规范建模平台:Brain MoNoCle.
Pub Date : 2024-12-05
Bethany Little, Nida Alyas, Alexander Surtees, Gavin P Winston, John S Duncan, David A Cousins, John-Paul Taylor, Peter Taylor, Karoline Leiberg, Yujiang Wang

Normative models of brain structure estimate the effects of covariates such as age and sex using large samples of healthy controls. These models can then be applied to e.g. smaller clinical cohorts to distinguish disease effects from other covariates. However, these advanced statistical modelling approaches can be difficult to access, and processing large healthy cohorts is computationally demanding. Thus, accessible platforms with pre-trained normative models are needed. We present such a platform for brain morphology analysis as an open-source web application (https://cnnplab.shinyapps.io/BrainMoNoCle/), with six key features: (i) user-friendly web interface, (ii) individual and group outputs, (iii) multi-site analysis, (iv) regional and whole-brain analysis, (v) integration with existing tools, and (vi) featuring multiple morphology metrics. Using a diverse sample of 3,276 healthy controls across 21 sites, we pre-trained normative models on various metrics. We validated the models with a small sample of individuals with bipolar disorder, showing outputs that aligned closely with existing literature only after applying our normative modelling. Using a cohort of people with temporal lobe epilepsy, we showed that individual-level abnormalities were in line with seizure lateralisation. Finally, with the ability to investigate multiple morphology measures in the same framework, we found that biological covariates are better explained in specific morphology measures, and for applications, only some measures are sensitive to the disease process. Our platform offers a comprehensive framework to analyse brain morphology in clinical and research settings. Validations confirm the superiority of normative models and the advantage of investigating a range of brain morphology metrics together.

大脑结构的规范模型是利用大量健康对照样本来估算年龄和性别等协变量的影响。然后,这些模型可应用于较小的临床队列,以区分疾病效应和其他协变量。然而,这些先进的统计建模方法可能难以使用,而且处理大型健康队列对计算要求很高。因此,我们需要可访问的、带有预训练常模的平台。我们提出的脑形态分析平台是一个开源网络应用程序 https://cnnplab.shinyapps.io/normativemodelshiny/,具有以下六大特点:(i) 用户友好的网络界面,(ii) 个人和群体输出,(iii) 多站点分析,(iv) 区域和全脑分析,(v) 与现有工具集成,以及 (vi) 具有多种形态学指标。我们利用 13 个站点的 3,276 个健康对照组的不同样本,对各种指标的标准模型进行了预训练。我们用一个双相情感障碍的小型临床样本对模型进行了验证,结果显示,只有在应用了我们的规范建模后,输出结果才与现有文献密切吻合。使用颞叶癫痫数据集进行的进一步验证也表明,模型与之前的群体层面研究结果和个体层面的癫痫发作侧化一致。最后,由于能够在同一框架内研究多种形态学测量,我们发现生物协变量在特定形态学测量中得到了更好的解释,而在临床应用中,只有某些测量对疾病过程敏感。我们的平台为在临床和研究环境中分析大脑形态提供了一个全面的框架。验证证实了常模的优越性以及同时研究一系列脑形态指标的优势。
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引用次数: 0
Motion-Guided Deep Image Prior for Cardiac MRI.
Pub Date : 2024-12-05
Marc Vornehm, Chong Chen, Muhammad Ahmad Sultan, Syed Murtaza Arshad, Yuchi Han, Florian Knoll, Rizwan Ahmad

Cardiovascular magnetic resonance imaging is a powerful diagnostic tool for assessing cardiac structure and function. Traditional breath-held imaging protocols, however, pose challenges for patients with arrhythmias or limited breath-holding capacity. We introduce Motion-Guided Deep Image prior (M-DIP), a novel unsupervised reconstruction framework for accelerated real-time cardiac MRI. M-DIP employs a spatial dictionary to synthesize a time-dependent template image, which is further refined using time-dependent deformation fields that model cardiac and respiratory motion. Unlike prior DIP-based methods, M-DIP simultaneously captures physiological motion and frame-to-frame content variations, making it applicable to a wide range of dynamic applications. We validate M-DIP using simulated MRXCAT cine phantom data as well as free-breathing real-time cine and single-shot late gadolinium enhancement data from clinical patients. Comparative analyses against state-of-the-art supervised and unsupervised approaches demonstrate M-DIP's performance and versatility. M-DIP achieved better image quality metrics on phantom data, as well as higher reader scores for in-vivo patient data.

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引用次数: 0
A mathematical language for linking fine-scale structure in spikes from hundreds to thousands of neurons with behaviour. 将数百到数千个神经元尖峰的精细结构与行为联系起来的数学语言。
Pub Date : 2024-12-05
Alexandra N Busch, Roberto C Budzinski, Federico W Pasini, Ján Mináč, Jonathan A Michaels, Megan Roussy, Roberto A Gulli, Ben C Corrigan, J Andrew Pruszynski, Julio Martinez-Trujillo, Lyle E Muller

Recent advances in neural recording technology allow simultaneously recording action potentials from hundreds to thousands of neurons in awake, behaving animals. However, characterizing spike patterns in the resulting data, and linking these patterns to behaviour, remains a challenging task. The lack of a rigorous mathematical language for variable numbers of events (spikes) emitted by multiple agents (neurons) is an important limiting factor. We introduce a new mathematical operation to decompose complex spike patterns into a set of simple, structured elements. This creates a mathematical language that allows comparing spike patterns across trials, detecting sub-patterns, and making links to behaviour via a clear distance measure. We apply the method to dual Utah array recordings from macaque prefrontal cortex, where this technique reveals previously unseen structure that can predict both memory-guided decisions and errors in a virtual-reality working memory task. These results demonstrate that this technique provides a powerful new approach to understand structure in the spike times of neural populations, at a scale that will continue to grow more and more rapidly in upcoming years.

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引用次数: 0
Adversarial Attacks on Large Language Models in Medicine. 对医学大型语言模型的对抗性攻击。
Pub Date : 2024-12-05
Yifan Yang, Qiao Jin, Furong Huang, Zhiyong Lu

The integration of Large Language Models (LLMs) into healthcare applications offers promising advancements in medical diagnostics, treatment recommendations, and patient care. However, the susceptibility of LLMs to adversarial attacks poses a significant threat, potentially leading to harmful outcomes in delicate medical contexts. This study investigates the vulnerability of LLMs to two types of adversarial attacks in three medical tasks. Utilizing real-world patient data, we demonstrate that both open-source and proprietary LLMs are susceptible to manipulation across multiple tasks. This research further reveals that domain-specific tasks demand more adversarial data in model fine-tuning than general domain tasks for effective attack execution, especially for more capable models. We discover that while integrating adversarial data does not markedly degrade overall model performance on medical benchmarks, it does lead to noticeable shifts in fine-tuned model weights, suggesting a potential pathway for detecting and countering model attacks. This research highlights the urgent need for robust security measures and the development of defensive mechanisms to safeguard LLMs in medical applications, to ensure their safe and effective deployment in healthcare settings.

将大型语言模型(LLM)集成到医疗保健应用中,有望在医疗诊断、治疗建议和患者护理方面取得进步。然而,大型语言模型易受对抗性攻击,这构成了重大威胁,有可能在微妙的医疗环境中导致有害结果。本研究调查了三种医疗任务中 LLMs 易受两类对抗性攻击的情况。利用真实世界的患者数据,我们证明了开源和专有 LLM 在多个任务中都容易受到操纵。这项研究进一步揭示,与一般领域的任务相比,特定领域的任务在模型微调方面需要更多的对抗数据,以有效执行攻击,尤其是对于能力更强的模型。我们发现,虽然整合对抗数据不会明显降低模型在医疗基准上的整体性能,但却会导致微调模型权重发生明显变化,这为检测和反击模型攻击提供了潜在途径。这项研究表明,迫切需要采取强有力的安全措施和开发防御机制来保护医疗应用中的 LLM,以确保其在医疗环境中的安全和有效部署。
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引用次数: 0
Photon-Counting CT in Cancer Radiotherapy: Technological Advances and Clinical Benefits. 癌症放疗中的光子计数 CT:技术进步与临床效益。
Pub Date : 2024-12-04
Keyur D Shah, Jun Zhou, Justin Roper, Anees Dhabaan, Hania Al-Hallaq, Amir Pourmorteza, Xiaofeng Yang

Photon-counting computed tomography (PCCT) marks a significant advancement over conventional energy-integrating detector (EID) CT systems. This review highlights PCCT's superior spatial and contrast resolution, reduced radiation dose, and multi-energy imaging capabilities, which address key challenges in radiotherapy, such as accurate tumor delineation, precise dose calculation, and treatment response monitoring. PCCT's improved anatomical clarity enhances tumor targeting while minimizing damage to surrounding healthy tissues. Additionally, metal artifact reduction (MAR) and quantitative imaging capabilities optimize workflows, enabling adaptive radiotherapy and radiomics-driven personalized treatment. Emerging clinical applications in brachytherapy and radiopharmaceutical therapy (RPT) show promising outcomes, although challenges like high costs and limited software integration remain. With advancements in artificial intelligence (AI) and dedicated radiotherapy packages, PCCT is poised to transform precision, safety, and efficacy in cancer radiotherapy, marking it as a pivotal technology for future clinical practice.

与传统的能量积分探测器(EID)CT 系统相比,光子计数计算机断层扫描(PCCT)是一项重大进步。本综述重点介绍了 PCCT 优越的空间和对比分辨率、降低的辐射剂量和多能量成像功能,这些功能可解决放疗中的关键难题,如准确划分肿瘤、精确计算剂量和治疗反应监测。PCCT 提高了解剖学清晰度,增强了肿瘤靶向性,同时最大限度地减少了对周围健康组织的损伤。此外,金属伪影减少(MAR)和定量成像功能优化了工作流程,实现了适应性放疗和放射组学驱动的个性化治疗。近距离放射治疗和放射性药物治疗(RPT)方面的新兴临床应用显示出良好的效果,但仍存在高成本和软件集成度有限等挑战。随着人工智能(AI)和专用放疗软件包的进步,PCCT 将改变癌症放疗的精确性、安全性和疗效,成为未来临床实践的关键技术。
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引用次数: 0
mdCATH: A Large-Scale MD Dataset for Data-Driven Computational Biophysics. mdCATH:用于数据驱动计算生物物理学的大规模 MD 数据集。
Pub Date : 2024-12-03
Antonio Mirarchi, Toni Giorgino, Gianni De Fabritiis

Recent advancements in protein structure determination are revolutionizing our understanding of proteins. Still, a significant gap remains in the availability of comprehensive datasets that focus on the dynamics of proteins, which are crucial for understanding protein function, folding, and interactions. To address this critical gap, we introduce mdCATH, a dataset generated through an extensive set of all-atom molecular dynamics simulations of a diverse and representative collection of protein domains. This dataset comprises all-atom systems for 5,398 domains, modeled with a state-of-the-art classical force field, and simulated in five replicates each at five temperatures from 320 K to 450 K. The mdCATH dataset records coordinates and forces every 1 ns, for over 62 ms of accumulated simulation time, effectively capturing the dynamics of the various classes of domains and providing a unique resource for proteome-wide statistical analyses of protein unfolding thermodynamics and kinetics. We outline the dataset structure and showcase its potential through four easily reproducible case studies, highlighting its capabilities in advancing protein science.

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引用次数: 0
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