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Enhancing structured light with optimized metasurfaces 利用优化的元表面增强结构光。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-08-16 DOI: 10.1038/s43588-024-00684-7
Jie Pan
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引用次数: 0
Accelerating the calculation of electron–phonon coupling strength with machine learning 利用机器学习加速电子-声子耦合强度的计算。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-08-08 DOI: 10.1038/s43588-024-00668-7
Yang Zhong, Shixu Liu, Binhua Zhang, Zhiguo Tao, Yuting Sun, Weibin Chu, Xin-Gao Gong, Ji-Hui Yang, Hongjun Xiang
The calculation of electron–phonon couplings (EPCs) is essential for understanding various fundamental physical properties, including electrical transport, optical and superconducting behaviors in materials. However, obtaining EPCs through fully first-principles methods is notably challenging, particularly for large systems or when employing advanced functionals. Here we introduce a machine learning framework to accelerate EPC calculations by utilizing atomic orbital-based Hamiltonian matrices and gradients predicted by an equivariant graph neural network. We demonstrate that our method not only yields EPC values in close agreement with first-principles results but also enhances calculation efficiency by several orders of magnitude. Application to GaAs using the Heyd–Scuseria–Ernzerhof functional reveals the necessity of advanced functionals for accurate carrier mobility predictions, while for the large Kagome crystal CsV3Sb5, our framework reproduces the experimentally observed double domes in pressure-induced superconducting phase diagrams. This machine learning framework offers a powerful and efficient tool for the investigation of diverse EPC-related phenomena in complex materials. A machine learning framework is proposed to accurately predict electron–phonon coupling (EPC) strengths while reducing computational costs compared with first-principles methods. This approach facilitates EPC calculations with advanced functionals, allowing the accurate determination of real-world material properties such as carrier mobility and superconductivity.
计算电子-声子耦合(EPCs)对于理解各种基本物理特性,包括材料中的电传输、光学和超导行为至关重要。然而,通过完全第一性原理方法获得 EPCs 具有明显的挑战性,尤其是对于大型系统或采用高级函数时。在这里,我们引入了一种机器学习框架,利用基于原子轨道的哈密顿矩阵和等变图神经网络预测的梯度来加速 EPC 计算。我们证明,我们的方法不仅能得到与第一原理结果接近的 EPC 值,还能将计算效率提高几个数量级。使用海德-斯库瑟里亚-恩泽霍夫(Heyd-Scuseria-Ernzerhof)函数对砷化镓的应用揭示了高级函数对准确预测载流子迁移率的必要性,而对于大型卡戈米晶体 CsV3Sb5,我们的框架再现了实验观察到的压力诱导超导相图中的双圆顶。这一机器学习框架为研究复杂材料中与 EPC 相关的各种现象提供了强大而高效的工具。
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引用次数: 0
A machine learning tool to efficiently calculate electron–phonon coupling 高效计算电子-声子耦合的机器学习工具。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-08-08 DOI: 10.1038/s43588-024-00680-x
A machine learning framework that uses atomic orbital-based Hamiltonian matrices and gradients predicted by an equivariant graph neural network is established to calculate electron–phonon coupling (EPC). This approach accelerates the calculations by several orders of magnitude, enabling EPC-related properties to be predicted for complex systems using highly accurate functionals.
建立了一个机器学习框架,利用基于原子轨道的哈密顿矩阵和等变图神经网络预测的梯度来计算电子-声子耦合(EPC)。这种方法将计算速度提高了几个数量级,从而能够利用高精度函数预测复杂系统的 EPC 相关特性。
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引用次数: 0
250 years of oxygen chemistry 150 年的氧气化学
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-07-30 DOI: 10.1038/s43588-024-00670-z
We look back on the discovery of oxygen in light of its upcoming milestone anniversary and highlight the computational contributions to oxygen reduction and evolution in chemistry.
在即将到来的氧气发现里程碑周年纪念之际,我们回顾了氧气的发现,并重点介绍了计算对化学中氧气还原和进化的贡献。
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引用次数: 0
Publisher Correction: A perspective on brain-age estimation and its clinical promise 出版商更正:透视脑年龄估算及其临床前景。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-07-30 DOI: 10.1038/s43588-024-00681-w
Christian Gaser, Polona Kalc, James H. Cole
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引用次数: 0
Computational electrochemistry of oxygen 250 years after Priestley 普利斯特里 150 年后的氧气计算电化学。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-07-30 DOI: 10.1038/s43588-024-00664-x
De-en Jiang
Since the first isolation of oxygen, chemists have explored oxygen reduction and evolution reactions. Now, computational chemists are trying to understand and predict the best catalysts for them. Here, the importance of various considerations for such calculations, as well as their challenges and opportunities, are discussed.
自从首次分离出氧气以来,化学家们一直在探索氧气的还原和进化反应。现在,计算化学家正试图了解和预测这些反应的最佳催化剂。在此,我们将讨论此类计算中各种考虑因素的重要性,以及它们所面临的挑战和机遇。
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引用次数: 0
A perspective on brain-age estimation and its clinical promise 从脑年龄估计及其临床前景的角度看问题。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-07-24 DOI: 10.1038/s43588-024-00659-8
Christian Gaser, Polona Kalc, James H. Cole
Brain-age estimation has gained increased attention in the neuroscientific community owing to its potential use as a biomarker of brain health. The difference between estimated and chronological age based on neuroimaging data enables a unique perspective on brain development and aging, with multiple open questions still remaining in the brain-age research field. This Perspective presents an overview of current advancements in the field and envisions the future evolution of the brain-age framework before its potential deployment in hospital settings. Brain-age estimation is gaining attention as a biomarker for brain health as it provides a unique perspective on aging. This Perspective reviews current advancements and future directions to ensure deployment in hospital settings.
脑年龄估算因其作为大脑健康生物标志物的潜在用途而日益受到神经科学界的关注。基于神经影像学数据的估计年龄和计时年龄之间的差异为大脑发育和衰老提供了一个独特的视角,但脑年龄研究领域仍存在多个未决问题。本视角概述了该领域目前的进展,并展望了脑年龄框架在医院环境中潜在应用之前的未来发展。
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引用次数: 0
Multi-task learning for medical foundation models 医学基础模型的多任务学习。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-07-19 DOI: 10.1038/s43588-024-00658-9
Jiancheng Yang
To address the challenge of pretraining foundational models with large datasets, a multi-task approach is proposed, thus helping to overcome the data scarcity problem in biomedical imaging.
为了应对使用大型数据集对基础模型进行预训练的挑战,我们提出了一种多任务方法,从而帮助克服生物医学成像中的数据稀缺问题。
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引用次数: 0
A multi-task learning strategy to pretrain models for medical image analysis 用于医学图像分析模型预训练的多任务学习策略。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-07-19 DOI: 10.1038/s43588-024-00666-9
Pretraining powerful deep learning models requires large, comprehensive training datasets, which are often unavailable for medical imaging. In response, the universal biomedical pretrained (UMedPT) foundational model was developed based on multiple small and medium-sized datasets. This model reduced the amount of data required to learn new target tasks by at least 50%.
对功能强大的深度学习模型进行预训练需要大型、全面的训练数据集,而医学影像通常无法获得这些数据集。为此,基于多个中小型数据集开发了通用生物医学预训练(UMedPT)基础模型。该模型将学习新目标任务所需的数据量减少了至少 50%。
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引用次数: 0
Overcoming data scarcity in biomedical imaging with a foundational multi-task model 利用基础多任务模型克服生物医学成像中的数据匮乏问题。
IF 12 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-07-19 DOI: 10.1038/s43588-024-00662-z
Raphael Schäfer, Till Nicke, Henning Höfener, Annkristin Lange, Dorit Merhof, Friedrich Feuerhake, Volkmar Schulz, Johannes Lotz, Fabian Kiessling
Foundational models, pretrained on a large scale, have demonstrated substantial success across non-medical domains. However, training these models typically requires large, comprehensive datasets, which contrasts with the smaller and more specialized datasets common in biomedical imaging. Here we propose a multi-task learning strategy that decouples the number of training tasks from memory requirements. We trained a universal biomedical pretrained model (UMedPT) on a multi-task database including tomographic, microscopic and X-ray images, with various labeling strategies such as classification, segmentation and object detection. The UMedPT foundational model outperformed ImageNet pretraining and previous state-of-the-art models. For classification tasks related to the pretraining database, it maintained its performance with only 1% of the original training data and without fine-tuning. For out-of-domain tasks it required only 50% of the original training data. In an external independent validation, imaging features extracted using UMedPT proved to set a new standard for cross-center transferability. UMedPT, a foundational model for biomedical imaging, has been trained on a variety of medical tasks with different types of label. It has achieved high performance with less training data in various clinical applications.
经过大规模预训练的基础模型在非医疗领域取得了巨大成功。然而,训练这些模型通常需要大型、全面的数据集,这与生物医学成像中常见的更小、更专业的数据集形成了鲜明对比。在这里,我们提出了一种多任务学习策略,将训练任务的数量与内存要求分离开来。我们在一个多任务数据库上训练了一个通用生物医学预训练模型(UMedPT),该数据库包括断层扫描、显微镜和 X 射线图像,并采用了分类、分割和对象检测等多种标记策略。UMedPT 基础模型的表现优于 ImageNet 预训练模型和以前的先进模型。对于与预训练数据库相关的分类任务,只需使用 1%的原始训练数据,无需微调即可保持性能。对于域外任务,它只需要原始训练数据的 50%。在外部独立验证中,使用 UMedPT 提取的成像特征被证明是跨中心可转移性的新标准。
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引用次数: 0
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Nature computational science
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