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A deep learning approach for rational ligand generation with toxicity control via reactive building blocks 通过活性构件控制毒性的深度学习配体生成方法。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-08 DOI: 10.1038/s43588-024-00718-0
Pengyong Li, Kaihao Zhang, Tianxiao Liu, Ruiqiang Lu, Yangyang Chen, Xiaojun Yao, Lin Gao, Xiangxiang Zeng
Deep generative models are gaining attention in the field of de novo drug design. However, the rational design of ligand molecules for novel targets remains challenging, particularly in controlling the properties of the generated molecules. Here, inspired by the DNA-encoded compound library technique, we introduce DeepBlock, a deep learning approach for block-based ligand generation tailored to target protein sequences while enabling precise property control. DeepBlock neatly divides the generation process into two steps: building blocks generation and molecule reconstruction, accomplished by a neural network and a rule-based reconstruction algorithm we proposed, respectively. Furthermore, DeepBlock synergizes the optimization algorithm and deep learning to regulate the properties of the generated molecules. Experiments show that DeepBlock outperforms existing methods in generating ligands with affinity, synthetic accessibility and drug likeness. Moreover, when integrated with simulated annealing or Bayesian optimization using toxicity as the optimization objective, DeepBlock successfully generates ligands with low toxicity while preserving affinity with the target. DeepBlock is a deep learning framework for ligand generation, inspired by the DNA-encoded compound library technique, that enhances ligand design with building blocks and a rule-based reconstruction algorithm, achieving better drug properties.
深度生成模型在新药设计领域越来越受到关注。然而,为新靶点合理设计配体分子仍然具有挑战性,尤其是在控制生成分子的性质方面。在此,受DNA编码化合物库技术的启发,我们引入了DeepBlock,这是一种深度学习方法,用于根据目标蛋白质序列生成基于块的配体,同时实现精确的性质控制。DeepBlock 巧妙地将生成过程分为两个步骤:构件生成和分子重构,分别由我们提出的神经网络和基于规则的重构算法完成。此外,DeepBlock 还协同优化算法和深度学习来调节生成分子的属性。实验表明,DeepBlock 在生成配体的亲和性、合成可及性和药物相似性方面优于现有方法。此外,当与以毒性为优化目标的模拟退火或贝叶斯优化相结合时,DeepBlock 能成功生成低毒性配体,同时保持与靶点的亲和性。
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引用次数: 0
Modeling the increase of electronic waste due to generative AI 模拟生成式人工智能导致的电子垃圾增加。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-08 DOI: 10.1038/s43588-024-00726-0
Loïc Lannelongue
A recent study has modeled and quantified the expected rise in electronic waste due to the increasing deployment of generative artificial intelligence.
最近的一项研究模拟并量化了由于越来越多地部署生成式人工智能,电子垃圾预计会增加。
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引用次数: 0
Enhancing protein stability prediction with geometric learning and pre-training strategies 利用几何学习和预训练策略增强蛋白质稳定性预测。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-08 DOI: 10.1038/s43588-024-00724-2
Minghui Li
A recent study introduces a series of approaches that predict protein fitness and stability after the introduction of mutations. The work focuses on combining different data and pre-training to overcome data scarcity.
最近的一项研究介绍了一系列预测蛋白质突变后适应性和稳定性的方法。这项工作的重点是结合不同的数据和预训练,以克服数据稀缺的问题。
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引用次数: 0
The zettabyte era is in our DNA zettabyte 时代是我们的基因。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-08 DOI: 10.1038/s43588-024-00717-1
Daniella Bar-Lev, Omer Sabary, Eitan Yaakobi
This Perspective surveys the critical computational challenges associated with in vitro DNA-based data storage. As digital data expand exponentially, traditional storage media are becoming less viable, making DNA a promising solution due to its density and durability. However, numerous obstacles remain, including error correction, data retrieval from large volumes of noisy reads, and scalability. The Perspective also highlights challenges for DNA-based data centers, such as fault tolerance, random access, and data removal, which must be addressed to make DNA-based storage practical. As digital data expand exponentially, traditional storage media are becoming less viable, making DNA a promising solution due to its density and durability. In this Perspective, the authors discuss the critical computational challenges associated with in vitro DNA-based data storage.
本视角探讨了与基于 DNA 的体外数据存储相关的关键计算挑战。随着数字数据呈指数级增长,传统的存储介质越来越不可行,而 DNA 因其密度和耐用性成为一种有前途的解决方案。然而,仍存在许多障碍,包括纠错、从大量嘈杂读数中检索数据以及可扩展性。透视》还强调了基于 DNA 的数据中心所面临的挑战,如容错、随机存取和数据移除,要使基于 DNA 的存储实用化,就必须解决这些问题。
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引用次数: 0
Real-time non-line-of-sight computational imaging using spectrum filtering and motion compensation 利用频谱滤波和运动补偿进行实时非视距计算成像。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-06 DOI: 10.1038/s43588-024-00722-4
Jun-Tian Ye, Yi Sun, Wenwen Li, Jian-Wei Zeng, Yu Hong, Zheng-Ping Li, Xin Huang, Xianghui Xue, Xin Yuan, Feihu Xu, Xiankang Dou, Jian-Wei Pan
Non-line-of-sight (NLOS) imaging aims at recovering the shape and albedo of hidden objects. Despite recent advances, real-time video of complex and dynamic scenes remains a major challenge owing to the weak signal of multiply scattered light. Here we propose and demonstrate a framework of spectrum filtering and motion compensation to realize high-quality NLOS video for room-sized scenes. Spectrum filtering leverages a wave-based model for denoising and deblurring in the frequency domain, enabling computational image reconstruction with a small number of sampling points. Motion compensation tailored with an interleaved scanning scheme can compute high-resolution live video during the acquisition of low-quality image sequences. Together, we demonstrate live NLOS videos at 4 fps for a variety of dynamic real-life scenes. The results mark a substantial stride toward real-time, large-scale and low-power NLOS imaging and sensing applications. The authors propose a framework incorporating spectrum filtering and motion compensation, which enables non-line-of-sight live videos at 4 fps for a variety of dynamic real-life scenes.
非视线(NLOS)成像旨在恢复隐藏物体的形状和反照率。尽管最近取得了一些进展,但由于多重散射光信号微弱,复杂动态场景的实时视频仍然是一个重大挑战。在此,我们提出并演示了一个频谱滤波和运动补偿框架,以实现房间大小场景的高质量 NLOS 视频。频谱滤波利用基于波的模型在频域中进行去噪和去毛刺处理,只需少量采样点即可实现计算图像重建。采用交错扫描方案的运动补偿可在采集低质量图像序列时计算出高分辨率的实时视频。我们共同演示了各种动态现实场景下每秒 4 帧的实时 NLOS 视频。这些成果标志着我们向实时、大规模、低功耗 NLOS 成像和传感应用迈出了实质性的一步。
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引用次数: 0
Deep generative design of RNA aptamers using structural predictions 利用结构预测深度生成设计 RNA 配合物。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-06 DOI: 10.1038/s43588-024-00720-6
Felix Wong, Dongchen He, Aarti Krishnan, Liang Hong, Alexander Z. Wang, Jiuming Wang, Zhihang Hu, Satotaka Omori, Alicia Li, Jiahua Rao, Qinze Yu, Wengong Jin, Tianqing Zhang, Katherine Ilia, Jack X. Chen, Shuangjia Zheng, Irwin King, Yu Li, James J. Collins
RNAs represent a class of programmable biomolecules capable of performing diverse biological functions. Recent studies have developed accurate RNA three-dimensional structure prediction methods, which may enable new RNAs to be designed in a structure-guided manner. Here, we develop a structure-to-sequence deep learning platform for the de novo generative design of RNA aptamers. We show that our approach can design RNA aptamers that are predicted to be structurally similar, yet sequence dissimilar, to known light-up aptamers that fluoresce in the presence of small molecules. We experimentally validate several generated RNA aptamers to have fluorescent activity, show that these aptamers can be optimized for activity in silico, and find that they exhibit a mechanism of fluorescence similar to that of known light-up aptamers. Our results demonstrate how structural predictions can guide the targeted and resource-efficient design of new RNA sequences. A deep learning platform for structure-guided, generative design of RNA sequences is developed and used to discover fluorescent RNA aptamers.
RNA 是一类可编程的生物大分子,能够发挥多种生物功能。最近的研究开发出了精确的 RNA 三维结构预测方法,从而可以在结构引导下设计新的 RNA。在这里,我们开发了一个结构到序列的深度学习平台,用于从头生成设计 RNA 合体。我们的研究表明,我们的方法可以设计出与已知的发光适配体结构相似但序列不同的 RNA 适配体,这些适配体在小分子存在时会发出荧光。我们通过实验验证了几种生成的 RNA 合体具有荧光活性,表明这些合体可以在硅学中进行活性优化,并发现它们的荧光机制与已知的发光合体类似。我们的研究结果表明,结构预测可以指导有针对性地设计新的 RNA 序列,并节约资源。
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引用次数: 0
Extracting reliable quantum outputs for noisy devices 为噪声设备提取可靠的量子输出。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-01 DOI: 10.1038/s43588-024-00713-5
Weikang Li, Dong-Ling Deng
A method is introduced to compute provable bounds on noise-free quantum expectation values from noisy samples, promising potential applications in quantum optimization and machine learning.
介绍了一种从噪声样本计算无噪声量子期望值的可证明边界的方法,该方法有望在量子优化和机器学习中得到潜在应用。
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引用次数: 0
Provable bounds for noise-free expectation values computed from noisy samples 从噪声样本计算出的无噪声期望值的可证明边界。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-01 DOI: 10.1038/s43588-024-00709-1
Samantha V. Barron, Daniel J. Egger, Elijah Pelofske, Andreas Bärtschi, Stephan Eidenbenz, Matthis Lehmkuehler, Stefan Woerner
Quantum computing has emerged as a powerful computational paradigm capable of solving problems beyond the reach of classical computers. However, today’s quantum computers are noisy, posing challenges to obtaining accurate results. Here, we explore the impact of noise on quantum computing, focusing on the challenges in sampling bit strings from noisy quantum computers and the implications for optimization and machine learning. We formally quantify the sampling overhead to extract good samples from noisy quantum computers and relate it to the layer fidelity, a metric to determine the performance of noisy quantum processors. Further, we show how this allows us to use the conditional value at risk of noisy samples to determine provable bounds on noise-free expectation values. We discuss how to leverage these bounds for different algorithms and demonstrate our findings through experiments on real quantum computers involving up to 127 qubits. The results show strong alignment with theoretical predictions. In this study, the authors investigate the impact of noise on quantum computing with a focus on the challenges in sampling bit strings from noisy quantum computers, which has implications for optimization and machine learning.
量子计算已成为一种强大的计算范式,能够解决经典计算机无法解决的问题。然而,当今的量子计算机噪声很大,给获得准确结果带来了挑战。在此,我们探讨了噪声对量子计算的影响,重点关注从噪声量子计算机中采样比特串的挑战以及对优化和机器学习的影响。我们正式量化了从噪声量子计算机中提取良好样本的采样开销,并将其与层保真度联系起来,层保真度是确定噪声量子处理器性能的指标。此外,我们还展示了如何利用高噪声样本的风险条件值来确定无噪声期望值的可证明边界。我们讨论了如何针对不同算法利用这些界限,并通过在涉及多达 127 个量子比特的真实量子计算机上进行实验来证明我们的发现。结果显示与理论预测非常吻合。
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引用次数: 0
E-waste challenges of generative artificial intelligence 生成式人工智能面临的电子垃圾挑战。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-10-28 DOI: 10.1038/s43588-024-00712-6
Peng Wang, Ling-Yu Zhang, Asaf Tzachor, Wei-Qiang Chen
Generative artificial intelligence (GAI) requires substantial computational resources for model training and inference, but the electronic-waste (e-waste) implications of GAI and its management strategies remain underexplored. Here we introduce a computational power-driven material flow analysis framework to quantify and explore ways of managing the e-waste generated by GAI, with a particular focus on large language models. Our findings indicate that this e-waste stream could increase, potentially reaching a total accumulation of 1.2–5.0 million tons during 2020–2030, under different future GAI development settings. This may be intensified in the context of geopolitical restrictions on semiconductor imports and the rapid server turnover for operational cost savings. Meanwhile, we show that the implementation of circular economy strategies along the GAI value chain could reduce e-waste generation by 16–86%. This underscores the importance of proactive e-waste management in the face of advancing GAI technologies. Generative artificial intelligence (GAI) is driving a surge in e-waste due to intensive computational infrastructure needs. This study emphasizes the necessity for proactive implementation of circular economy practices throughout GAI value chains.
生成式人工智能(GAI)需要大量计算资源来进行模型训练和推理,但 GAI 及其管理策略对电子垃圾(e-waste)的影响仍未得到充分探索。在此,我们引入了一个计算力驱动的物质流分析框架,以量化和探索管理 GAI 产生的电子垃圾的方法,尤其侧重于大型语言模型。我们的研究结果表明,在未来不同的 GAI 发展环境下,电子废物流可能会增加,在 2020-2030 年期间可能达到 120-500 万吨的总积累量。在地缘政治对半导体进口的限制以及服务器为节约运营成本而快速更替的背景下,这种情况可能会加剧。同时,我们的研究表明,在 GAI 价值链上实施循环经济战略可将电子垃圾的产生量减少 16-86%。这凸显了面对不断进步的 GAI 技术,积极管理电子废物的重要性。
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引用次数: 0
Publisher Correction: Reliable deep learning in anomalous diffusion against out-of-distribution dynamics 出版商更正:针对分布外动态异常扩散的可靠深度学习。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-10-28 DOI: 10.1038/s43588-024-00729-x
Xiaochen Feng, Hao Sha, Yongbing Zhang, Yaoquan Su, Shuai Liu, Yuan Jiang, Shangguo Hou, Sanyang Han, Xiangyang Ji
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引用次数: 0
期刊
Nature computational science
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