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Making neural networks more neural. 让神经网络更神经化。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-02-13 DOI: 10.1016/j.patter.2026.101494
Alan W Freeman

Deep neural networks (DNNs) are practical and effective but, despite the name, they lack biological validity. The recent study by Kang et al.1 in Patterns takes a step toward rectifying this deficit by hard-wiring receptive fields into the first layer of a visual DNN, and the authors show that their network can generalize across image types. Training on photographs, for example, resulted in good performance on sketches; conventional DNNs did not match this behavior.

深度神经网络(dnn)是实用和有效的,但是,尽管名字,他们缺乏生物学有效性。Kang等人最近在Patterns上的研究1通过将接受域硬连接到视觉深度神经网络的第一层,向纠正这一缺陷迈出了一步,作者表明他们的网络可以跨图像类型进行泛化。例如,在摄影方面的训练导致了在素描方面的良好表现;传统的深度神经网络不符合这种行为。
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引用次数: 0
Creating strong predictive models in oncology. 在肿瘤学领域建立强大的预测模型。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-02-13 DOI: 10.1016/j.patter.2026.101492
Michael F Gensheimer

Many oncology predictive models fail to improve care. Issues include risks of bias, underpowered radiomics studies, and limited clinical impact. A path forward involves an emphasis on clinically actionable questions, rigor, and generalizability.

许多肿瘤预测模型未能改善护理。问题包括偏倚风险、放射组学研究不足和有限的临床影响。前进的道路包括强调临床可操作的问题,严谨性和概括性。
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引用次数: 0
Embeddings from language models are good learners for single-cell data analysis. 语言模型的嵌入是单细胞数据分析的良好学习器。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-01-30 eCollection Date: 2026-02-13 DOI: 10.1016/j.patter.2025.101431
Tianyu Liu, Tianqi Chen, Wangjie Zheng, Xiao Luo, Yiqun Chen, Hongyu Zhao

Foundation models (FMs) have been built to analyze single-cell data with different degrees of success. Here, we present scELMo (single-cell embedding from language models), a method for analyzing single-cell data with the help of large language models (LLMs). LLMs can generate both the description of metadata information and the embeddings for such descriptions. We then combine the embeddings from LLMs with the raw data under the zero-shot learning framework to further extend its function by using the fine-tuning framework to handle different tasks. We demonstrate that scELMo is capable of cell clustering, batch effect correction, and cell-type annotation without training a new model. Moreover, the fine-tuning framework of scELMo can help with more challenging tasks, including in silico treatment analysis or modeling perturbation. scELMo has a lighter structure and lower requirements for resources, suggesting a more promising path.

已经建立了基础模型(FMs)来分析单细胞数据,并取得了不同程度的成功。在这里,我们提出了scELMo(单细胞嵌入语言模型),这是一种在大型语言模型(llm)的帮助下分析单细胞数据的方法。llm既可以生成元数据信息的描述,也可以生成这种描述的嵌入。然后,我们将llm的嵌入与零射击学习框架下的原始数据结合起来,通过使用微调框架来处理不同的任务,进一步扩展其功能。我们证明了scELMo能够在不训练新模型的情况下进行细胞聚类、批处理效果校正和细胞类型注释。此外,scELMo的微调框架可以帮助完成更具挑战性的任务,包括硅处理分析或扰动建模。scELMo结构更轻,对资源的要求更低,是一条更有前途的道路。
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引用次数: 0
Prewired static visual receptive fields for environment-agnostic perception. 环境不可知感知的预连接静态视觉接受野。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-01-30 eCollection Date: 2026-02-13 DOI: 10.1016/j.patter.2025.101475
Minjun Kang, Seungdae Baek, Se-Bum Paik

Biological brains can effortlessly adapt to continuously changing stimulus environments, whereas conventional deep neural networks (DNNs) remain highly susceptible to domain shifts. Here, we demonstrate that static, hard-wired receptive fields, which spontaneously emerge in the early visual pathway, facilitate environment-agnostic object recognition in the brain. To test this mechanism, we introduced pre-developed Gabor filters in the early layers of DNNs, keeping them fixed during training. Despite the reduced learning flexibility, our networks exhibited robust continual learning capabilities under significant domain shifts, unlike conventional DNNs, which fail to generalize under similar conditions. Our network achieved generalized representations across domains in the latent space, while conventional DNNs only captured domain-specific variance. The static visual filters helped prevent local texture biases, leading to shape-based perception similar to that of primates. These findings highlight an intrinsic biological strategy that enables reliable continual learning in dynamic and unpredictable environments.

生物大脑可以毫不费力地适应不断变化的刺激环境,而传统的深度神经网络(dnn)仍然极易受到域转移的影响。在这里,我们证明了在早期视觉通路中自发出现的静态、硬连线的接受野,促进了大脑中与环境无关的物体识别。为了测试这种机制,我们在dnn的早期层中引入了预先开发的Gabor过滤器,并在训练期间保持固定。尽管学习灵活性降低,但我们的网络在显著的域转移下表现出强大的持续学习能力,而传统的深度神经网络在类似条件下无法泛化。我们的网络在潜在空间中实现了跨域的广义表示,而传统的深度神经网络仅捕获域特定方差。静态视觉过滤器有助于防止局部纹理偏差,导致类似于灵长类动物的基于形状的感知。这些发现突出了内在的生物学策略,使在动态和不可预测的环境中可靠地持续学习。
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引用次数: 0
A reframed landscape of causal emergence. 一个重新定义的因果出现的景观。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-01-09 DOI: 10.1016/j.patter.2025.101476
Olive R Cawiding, Yun Min Song, Jae Kyoung Kim

Complex systems can often be analyzed at either the microscale of their individual components or the macroscale of their collective organization, yet it remains debated which level of description offers the most meaningful causal understanding. Hoel's recent study in Patterns addresses this challenge by introducing Causal Emergence 2.0, a novel formalization showing that a system's causal workings are best described by how causal influence is distributed across its hierarchy of scales.

复杂的系统通常既可以从微观层面的单个组成部分进行分析,也可以从宏观层面的集体组织进行分析,然而,哪种层次的描述能够提供最有意义的因果关系理解,仍然存在争议。Hoel最近在《模式》(Patterns)上的研究通过引入“因果涌现2.0”(Causal Emergence 2.0)解决了这一挑战,这是一种新的形式化方法,表明因果影响如何在其层次结构中分布,可以最好地描述系统的因果运作。
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引用次数: 0
Quantifying emergent complexity. 量化紧急复杂性。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-01-09 DOI: 10.1016/j.patter.2025.101472
Erik Hoel

Complex systems can be described at myriad different scales, and their causal workings often have a multiscale structure (e.g., a computer can be described at the microscale of its hardware circuitry, the mesoscale of its machine code, and the macroscale of its operating system). While scientists study and model systems across the full hierarchy of their scales, from microphysics to macroeconomics, there is debate about what the macroscales of systems can possibly add beyond mere compression. To resolve this long-standing issue, here, a new theory of emergence is introduced that can distinguish which scales irreducibly contribute to a system's causal workings. The theory's application is demonstrated in coarse grains of Markov chains, revealing a novel measure of emergent complexity: how widely distributed a system's causal contributions are across its hierarchy of scales.

复杂的系统可以用无数不同的尺度来描述,它们的因果关系通常具有多尺度结构(例如,一台计算机可以用其硬件电路的微观尺度来描述,用其机器代码的中尺度来描述,用其操作系统的宏观尺度来描述)。当科学家们从微观物理学到宏观经济学在其尺度的整个层次上研究和模拟系统时,关于系统的宏观尺度除了单纯的压缩之外可能增加什么存在争论。为了解决这个长期存在的问题,这里引入了一种新的涌现理论,可以区分哪些尺度对系统的因果作用有不可约的贡献。该理论的应用在马尔可夫链的粗粒中得到了证明,揭示了一种新兴复杂性的新度量:系统的因果贡献在其层次结构中的分布有多广。
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引用次数: 0
Recalibrating academic expertise in the age of generative AI. 在生成式人工智能时代重新校准学术专业知识。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-01-09 DOI: 10.1016/j.patter.2025.101473
Zhicheng Lin, Aamir Sohail

The integration of generative AI (GenAI) into academic workflows represents a fundamental shift in scientific practice. While these tools can amplify productivity, they risk eroding the cognitive foundations of expertise by simulating the very tasks through which scientific competence is developed, from synthesis to experimental design to writing. Uncritical reliance can lead to skill atrophy and AI complacency. We propose a framework of essential AI meta-skills: strategic direction, critical discernment, and systematic calibration. These constitute a new form of scientific literacy that builds on traditional critical thinking. Through domain-specific examples and a pedagogical model based on situated learning, we show how these meta-skills can be cultivated to ensure that researchers, particularly trainees, maintain intellectual autonomy. Without deliberate cultivation of these meta-skills, we risk creating the first generation of researchers who serve their tools rather than direct them.

将生成式人工智能(GenAI)集成到学术工作流程中代表了科学实践的根本转变。虽然这些工具可以提高生产力,但它们有可能侵蚀专业知识的认知基础,因为它们模拟了从合成到实验设计再到写作等科学能力发展所需要的任务。不加批判的依赖会导致技能萎缩和人工智能的自满。我们提出了一个基本的人工智能元技能框架:战略方向、关键识别和系统校准。这些构成了一种建立在传统批判性思维基础上的新形式的科学素养。通过特定领域的例子和基于情境学习的教学模型,我们展示了如何培养这些元技能,以确保研究人员,特别是学员,保持智力自主。如果不刻意培养这些元技能,我们可能会创造出第一代服务于工具而不是指导工具的研究人员。
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引用次数: 0
Keeping generative artificial intelligence reliable in omics biology. 在组学生物学中保持可生成人工智能的可靠性。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-01-09 DOI: 10.1016/j.patter.2025.101417
Thomas Burger

Generative artificial intelligence can be used to create realistic new data, even for complex real-world processes that cannot be exhaustively modeled: the model is simply learned from preexisting data. Generative artificial intelligence is therefore expected to be a game changer in omics research, where data collection is hampered by considerable experimental constraints. However, it can also "hallucinate"-i.e., create data that are too original to be realistic-which is a critical issue in molecular biology, as hallucinated inferences could have devastating consequences. The author thus explores various use cases to mitigate hallucination-induced risks and to safely unleash the full potential of generative methods.

生成式人工智能可以用来创建真实的新数据,即使是对于无法详尽建模的复杂现实世界过程:模型只是从先前存在的数据中学习。因此,生成式人工智能有望成为组学研究的游戏规则改变者,在组学研究中,数据收集受到相当大的实验限制。然而,它也可以“产生幻觉”。这是分子生物学中的一个关键问题,因为幻觉推理可能会带来毁灭性的后果。因此,作者探索了各种用例,以减轻幻觉引起的风险,并安全地释放生成方法的全部潜力。
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引用次数: 0
Detecting clinically relevant topological structures in multiplexed spatial proteomics using TopKAT. 利用TopKAT检测多路空间蛋白质组学中临床相关的拓扑结构。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2026-01-09 DOI: 10.1016/j.patter.2025.101456
Sarah Samorodnitsky, Katie Campbell, Amarise Little, Wodan Ling, Ni Zhao, Yen-Chi Chen, Michael C Wu

Multiplexed spatial proteomics profiling platforms expose the intricate geometric structure of cells in the tumor microenvironment (TME). The spatial arrangement of cells has been shown to have important clinical implications, correlating with disease prognosis and treatment response. These datasets require new statistical methods to test whether cell-level images are associated with patient-level outcomes. We propose the topological kernel association test (TopKAT), which combines persistent homology with kernel testing to determine whether geometric structures created by cells predict continuous, binary, or survival outcomes. TopKAT quantifies the topological structure of cells in each image using persistence diagrams and compares the similarities between persistence diagrams on the basis of the number and lifespan of the detected homologies among cells. We show that TopKAT can be more powerful than existing approaches, particularly when cells arise along the boundary of a ring and demonstrate its utility in breast cancer and colorectal cancer applications.

多路空间蛋白质组学分析平台揭示了肿瘤微环境(TME)中细胞的复杂几何结构。细胞的空间排列已被证明具有重要的临床意义,与疾病预后和治疗反应相关。这些数据集需要新的统计方法来测试细胞水平的图像是否与患者水平的结果相关。我们提出拓扑核关联测试(TopKAT),它结合了持久同源性和核测试,以确定细胞创建的几何结构是否预测连续、二进制或生存结果。TopKAT使用持久性图量化每个图像中细胞的拓扑结构,并根据检测到的细胞间同源性的数量和寿命比较持久性图之间的相似性。我们表明,TopKAT可以比现有的方法更强大,特别是当细胞沿着环的边界出现时,并证明其在乳腺癌和结直肠癌中的应用。
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引用次数: 0
IoT-LLM: A framework for enhancing large language model reasoning from real-world sensor data. IoT-LLM:一个从真实传感器数据中增强大型语言模型推理的框架。
IF 7.4 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2025-12-30 eCollection Date: 2026-01-09 DOI: 10.1016/j.patter.2025.101429
Tuo An, Yunjiao Zhou, Han Zou, Jianfei Yang

Large language models (LLMs) excel in textual tasks but often struggle with physical-world reasoning tasks. Inspired by human cognition-where perception is fundamental to reasoning-we explore augmenting LLMs with enhanced perception abilities using Internet of Things (IoT) data and pertinent knowledge. In this work, we systematically study LLMs' capability to address IoT-sensory tasks, by augmenting their perception and knowledge base, and then propose a unified framework, IoT-LLM, to enhance such capability. In IoT-LLM, we customize three steps: preprocessing IoT data into suitable formats, expanding LLMs' knowledge via IoT-oriented retrieval-augmented generation, and activating LLMs' commonsense knowledge through chain-of-thought prompting. We design a benchmark comprising five real-world tasks with varying data types and reasoning complexities to evaluate the performance of IoT-LLM. Experimental results reveal that IoT-LLM significantly improves the performance of IoT-sensory task reasoning of LLMs, with models such as GPT-4o-mini showing a 49.4% average improvement over previous methods.

大型语言模型(llm)在文本任务中表现出色,但在物理世界的推理任务中往往表现不佳。受人类认知(感知是推理的基础)的启发,我们探索利用物联网(IoT)数据和相关知识增强llm的感知能力。在这项工作中,我们系统地研究了llm通过增强其感知和知识库来解决物联网感官任务的能力,然后提出了一个统一的框架IoT-LLM来增强这种能力。在物联网法学硕士中,我们定制了三个步骤:将物联网数据预处理为合适的格式,通过面向物联网的检索增强生成扩展法学硕士的知识,以及通过思维链提示激活法学硕士的常识知识。我们设计了一个包含五个具有不同数据类型和推理复杂性的现实世界任务的基准,以评估IoT-LLM的性能。实验结果表明,IoT-LLM显著提高了llm的物联网感知任务推理性能,gpt - 40 -mini等模型比以前的方法平均提高了49.4%。
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引用次数: 0
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Patterns
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