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The lost data: how AI systems censor LGBTQ+ content in the name of safety 丢失的数据:人工智能系统如何以安全之名审查 LGBTQ+ 内容
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-24 DOI: 10.1038/s43588-024-00695-4
Sophia Chen
Many AI companies implement safety systems to protect users from offensive or inaccurate content. Though well intentioned, these filters can exacerbate existing inequalities, and data shows that they have disproportionately removed LGBTQ+ content.
许多人工智能公司都实施了安全系统,以保护用户免受攻击性或不准确内容的影响。尽管初衷是好的,但这些过滤器可能会加剧现有的不平等,数据显示,它们不成比例地删除了 LGBTQ+ 内容。
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引用次数: 0
Accelerating economic development in Latin America through overcoming access challenges to supercomputing infrastructure 通过克服超级计算基础设施的接入挑战加速拉丁美洲的经济发展
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-24 DOI: 10.1038/s43588-024-00686-5
Joaquín Barroso-Flores
The current global economy heavily relies on digital and data-based technologies, which have the use of supercomputing at their core. Latin America is a vast source of human talent in computer science, but the lag in infrastructure investment due to economic and political struggles may cause the economic development of the region to fall behind.
当前的全球经济在很大程度上依赖于以超级计算为核心的数字和数据技术。拉丁美洲拥有大量的计算机科学人才,但由于经济和政治斗争导致基础设施投资滞后,可能导致该地区经济发展落后。
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引用次数: 0
Putting a spotlight on diversity, equity, and inclusion 聚焦多样性、公平性和包容性
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-24 DOI: 10.1038/s43588-024-00702-8
We present a Focus that calls attention to the current state of diversity, equity, and inclusion in computational science, including discussions on the challenges of improving equitable access and representation, as well as on strategies for improving computational tools to avoid contributing to inequalities.
我们推出的《聚焦》呼吁人们关注计算科学的多样性、公平性和包容性现状,包括讨论改善公平获取和代表性所面临的挑战,以及改进计算工具以避免造成不平等的策略。
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引用次数: 0
Defining our future with generative AI 用生成式人工智能定义我们的未来
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-24 DOI: 10.1038/s43588-024-00694-5
Siddharth Suri
We can design, build and use AI systems with intentionality, to make them an equalizing force within society, or we can use AI without intentionality, in which case AI could become a force that exacerbates inequality, or both. Society has the power to decide which.
我们可以有意识地设计、构建和使用人工智能系统,使其成为社会中的一股平等力量;我们也可以无意识地使用人工智能,在这种情况下,人工智能可能成为一股加剧不平等的力量,或者两者兼而有之。社会有能力决定采用哪种方式。
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引用次数: 0
Joint inference of discrete and continuous factors captures variability across and within cell types 离散因子和连续因子的联合推断可捕捉细胞类型间和细胞类型内的变异性。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-23 DOI: 10.1038/s43588-024-00696-3
We developed mixture model inference with discrete-coupled autoencoders (MMIDAS), an unsupervised variational framework that jointly learns discrete clusters and continuous cluster-specific variability. When applied to unimodal or multimodal single-cell omic data, MMIDAS learned single-cell representations with robust cell type definitions and interpretable, continuous within-cell type variability.
我们开发了离散耦合自动编码器混合模型推断(MMIDAS),这是一种无监督变异框架,可联合学习离散聚类和连续聚类的特定变异性。当应用于单模态或多模态单细胞 omic 数据时,MMIDAS 学习到的单细胞表征具有稳健的细胞类型定义和可解释的连续细胞内类型变异性。
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引用次数: 0
Joint inference of discrete cell types and continuous type-specific variability in single-cell datasets with MMIDAS 利用 MMIDAS 联合推断单细胞数据集中的离散细胞类型和连续类型特异性变异性
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-23 DOI: 10.1038/s43588-024-00683-8
Yeganeh Marghi, Rohan Gala, Fahimeh Baftizadeh, Uygar Sümbül
Reproducible definition and identification of cell types is essential to enable investigations into their biological function and to understand their relevance in the context of development, disease and evolution. Current approaches model variability in data as continuous latent factors, followed by clustering as a separate step, or immediately apply clustering on the data. We show that such approaches can suffer from qualitative mistakes in identifying cell types robustly, particularly when the number of such cell types is in the hundreds or even thousands. Here we propose an unsupervised method, Mixture Model Inference with Discrete-coupled AutoencoderS (MMIDAS), which combines a generalized mixture model with a multi-armed deep neural network to jointly infer the discrete type and continuous type-specific variability. Using four recent datasets of brain cells spanning different technologies, species and conditions, we demonstrate that MMIDAS can identify reproducible cell types and infer cell type-dependent continuous variability in both unimodal and multimodal datasets. Clustering in high-dimensional spaces with a large number of clusters and identifying common aspects of within-cluster variability remain challenging. Here the authors develop an unsupervised method for this purpose and demonstrate it on brain single-cell datasets.
要研究细胞类型的生物功能,了解它们在发育、疾病和进化过程中的相关性,就必须对细胞类型进行可重复的定义和识别。目前的方法是将数据中的变异性建模为连续的潜在因素,然后将聚类作为一个单独的步骤,或者立即对数据进行聚类。我们发现,这些方法在稳健识别细胞类型时可能会出现定性错误,尤其是当细胞类型的数量达到数百甚至数千时。在这里,我们提出了一种无监督方法--离散耦合自动编码器混合模型推断法(MMIDAS),它将广义混合模型与多臂深度神经网络相结合,共同推断离散类型和连续类型的特异性变化。我们利用最近四个跨越不同技术、物种和条件的脑细胞数据集,证明 MMIDAS 可以在单模态和多模态数据集中识别可重现的细胞类型,并推断依赖于细胞类型的连续变异性。在具有大量聚类的高维空间中进行聚类以及识别聚类内变异性的共同方面仍然具有挑战性。作者为此开发了一种无监督方法,并在大脑单细胞数据集上进行了演示。
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引用次数: 0
Biophysically interpretable inference of cell types from multimodal sequencing data 从多模态测序数据推断细胞类型的生物物理可解释性
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-20 DOI: 10.1038/s43588-024-00689-2
Tara Chari, Gennady Gorin, Lior Pachter
Multimodal, single-cell genomics technologies enable simultaneous measurement of multiple facets of DNA and RNA processing in the cell. This creates opportunities for transcriptome-wide, mechanistic studies of cellular processing in heterogeneous cell populations, such as regulation of cell fate by transcriptional stochasticity or tumor proliferation through aberrant splicing dynamics. However, current methods for determining cell types or ‘clusters’ in multimodal data often rely on ad hoc approaches to balance or integrate measurements, and assumptions ignoring inherent properties of the data. To enable interpretable and consistent cell cluster determination, we present meK-means (mechanistic K-means) which integrates modalities through a unifying model of transcription to learn underlying, shared biophysical states. With meK-means we can cluster cells with nascent and mature mRNA measurements, utilizing the causal, physical relationships between these modalities. This identifies shared transcription dynamics across cells, which induce the observed molecule counts, and provides an alternative definition for ‘clusters’ through the governing parameters of cellular processes. MeK-means clusters single-cell multimodal data by linking modalities through their biophysical relationships. We redefine clusters through transcription kinetics to reveal how RNA production and processing drive cellular diversity and disease.
多模态单细胞基因组学技术可同时测量细胞中 DNA 和 RNA 处理的多个方面。这为对异质细胞群中的细胞处理过程进行全转录组机理研究创造了机会,例如通过转录随机性调节细胞命运或通过异常剪接动态调节肿瘤增殖。然而,目前在多模态数据中确定细胞类型或 "集群 "的方法往往依赖于平衡或整合测量数据的特别方法,以及忽略数据固有特性的假设。为了实现可解释且一致的细胞群确定,我们提出了 meK-means(机械 K-means),它通过统一的转录模型整合各种模式,以了解潜在的、共享的生物物理状态。有了 meK-means,我们就能利用这些模式之间的因果物理关系,通过对新生和成熟 mRNA 的测量对细胞进行聚类。这就确定了细胞间共享的转录动态,从而诱导观察到的分子数量,并通过细胞过程的管理参数为 "群集 "提供了另一种定义。MeK-means 通过生物物理关系将各种模式联系起来,从而对单细胞多模态数据进行聚类。我们通过转录动力学重新定义集群,揭示 RNA 的产生和处理如何驱动细胞多样性和疾病。
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引用次数: 0
Delineating cell types with transcriptional kinetics 利用转录动力学划分细胞类型
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-20 DOI: 10.1038/s43588-024-00691-8
Yicheng Gao, Qi Liu
A recent study proposes an approach that integrates unspliced and spliced mRNA count data by leveraging shared biophysical states across cells, offering a more interpretable and consistent framework for determining cell clusters based on transcriptional kinetics.
最近的一项研究提出了一种方法,利用细胞间共享的生物物理状态整合未剪接和剪接的 mRNA 计数数据,为根据转录动力学确定细胞集群提供了一个更易于解释和一致的框架。
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引用次数: 0
Automated customization of large-scale spiking network models to neuronal population activity 根据神经元群体活动自动定制大规模尖峰网络模型
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-16 DOI: 10.1038/s43588-024-00688-3
Shenghao Wu, Chengcheng Huang, Adam C. Snyder, Matthew A. Smith, Brent Doiron, Byron M. Yu
Understanding brain function is facilitated by constructing computational models that accurately reproduce aspects of brain activity. Networks of spiking neurons capture the underlying biophysics of neuronal circuits, yet their activity’s dependence on model parameters is notoriously complex. As a result, heuristic methods have been used to configure spiking network models, which can lead to an inability to discover activity regimes complex enough to match large-scale neuronal recordings. Here we propose an automatic procedure, Spiking Network Optimization using Population Statistics (SNOPS), to customize spiking network models that reproduce the population-wide covariability of large-scale neuronal recordings. We first confirmed that SNOPS accurately recovers simulated neural activity statistics. Then, we applied SNOPS to recordings in macaque visual and prefrontal cortices and discovered previously unknown limitations of spiking network models. Taken together, SNOPS can guide the development of network models, thereby enabling deeper insight into how networks of neurons give rise to brain function. An automatic framework, SNOPS, is developed for configuring a spiking network model to reproduce neuronal recordings. It is used to discover previously unknown limitations of spiking network models, thereby guiding model development.
构建能准确再现大脑活动的计算模型有助于理解大脑功能。尖峰神经元网络捕捉到了神经元回路的基本生物物理学原理,但它们的活动对模型参数的依赖却出了名的复杂。因此,启发式方法一直被用于配置尖峰网络模型,这可能导致无法发现足够复杂的活动机制,从而无法与大规模神经元记录相匹配。在这里,我们提出了一种自动程序--使用群体统计的尖峰网络优化(SNOPS)--来定制尖峰网络模型,以重现大规模神经元记录的群体共变性。我们首先证实 SNOPS 能准确恢复模拟的神经活动统计数据。然后,我们将 SNOPS 应用于猕猴视觉和前额叶皮层的记录,发现了尖峰网络模型之前未知的局限性。综上所述,SNOPS 可以指导网络模型的开发,从而让人们更深入地了解神经元网络是如何产生大脑功能的。
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引用次数: 0
Deconstructing the compounds of altruism 解构利他主义的化合物
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-12 DOI: 10.1038/s43588-024-00690-9
Jie Hu
A computational model is proposed to provide a better understanding of human altruism, highlighting the role of multiple motives that influence altruistic behaviors.
为了更好地理解人类的利他主义,我们提出了一个计算模型,强调影响利他行为的多种动机的作用。
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引用次数: 0
期刊
Nature computational science
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