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Categorization of 33 computational methods to detect spatially variable genes from spatially resolved transcriptomics data. 对从空间解析转录组学数据中检测空间可变基因的 31 种计算方法进行分类。
Pub Date : 2024-10-03
Guanao Yan, Shuo Harper Hua, Jingyi Jessica Li

In the analysis of spatially resolved transcriptomics data, detecting spatially variable genes (SVGs) is crucial. Numerous computational methods exist, but varying SVG definitions and methodologies lead to incomparable results. We review 33 state-of-the-art methods, categorizing SVGs into three types: overall, cell-type-specific, and spatial-domain-marker SVGs. Our review explains the intuitions underlying these methods, summarizes their applications, and categorizes the hypothesis tests they use in the trade-off between generality and specificity for SVG detection. We discuss challenges in SVG detection and propose future directions for improvement. Our review offers insights for method developers and users, advocating for category-specific benchmarking.

在分析空间解析转录组学数据时,检测空间可变基因(SVG)至关重要。目前有许多计算方法,但不同的 SVG 定义和方法会导致无法比较的结果。我们综述了 31 种最先进的方法,将 SVG 分成三种类型:整体 SVG、细胞类型特异性 SVG 和空间域标记 SVG。我们的综述解释了这些方法的基本直觉,总结了它们的应用,并对它们在 SVG 检测的通用性和特异性权衡中使用的假设检验进行了分类。我们讨论了 SVG 检测所面临的挑战,并提出了未来的改进方向。我们的综述为方法开发者和用户提供了启示,并倡导针对具体类别进行基准测试。
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引用次数: 0
Ankle Exoskeletons May Hinder Standing Balance in Simple Models of Older and Younger Adults. 在老年人和年轻人的简单模型中,踝关节外骨骼可能会妨碍站立平衡。
Pub Date : 2024-10-02
Daphna Raz, Varun Joshi, Brian R Umberger, Necmiye Ozay

Humans rely on ankle torque to maintain standing balance, particularly in the presence of small to moderate perturbations. Reductions in maximum torque (MT) production and maximum rate of torque development (MRTD) occur at the ankle with age, diminishing stability. Ankle exoskeletons are powered orthotic devices that may assist older adults by compensating for reduced muscle force and power production capabilities. They may also be able to assist with ankle strategies used for balance. However, no studies have investigated the effect of such devices on balance in older adults. Here, we model the effect ankle exoskeletons have on stability in physics-based models of healthy young and old adults, focusing on the mitigation of age-related deficits such as reduced MT and MRTD. We show that an ankle exoskeleton moderately reduces feasible stability boundaries in users who have full ankle strength. For individuals with age-related deficits, there is a trade-off. While exoskeletons augment stability in low velocity conditions, they reduce stability in some high velocity conditions. Our results suggest that well-established control strategies must still be experimentally validated in older adults.

人类依靠踝关节扭矩来保持站立平衡,尤其是在小到中等程度的扰动情况下。随着年龄的增长,踝关节的最大扭矩(MT)产生率和最大扭矩发展率(MRTD)都会下降,从而降低稳定性。踝关节外骨骼是一种动力矫形装置,可通过补偿肌肉力量和动力产生能力的降低来帮助老年人。它们还可以帮助踝关节掌握平衡。然而,还没有研究调查过此类装置对老年人平衡能力的影响。在这里,我们以健康的年轻人和老年人为研究对象,在基于物理学的模型中模拟了踝关节外骨骼对稳定性的影响,重点是减轻与年龄有关的缺陷,如 MT 和 MRTD 的降低。我们的研究表明,踝关节外骨骼可适度降低踝关节力量充沛的使用者的可行稳定性界限。对于有年龄相关缺陷的人来说,需要权衡利弊。虽然外骨骼增强了低速条件下的稳定性,但却降低了某些高速条件下的稳定性。我们的研究结果表明,成熟的控制策略仍需在老年人身上进行实验验证。
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引用次数: 0
A Geometric Tension Dynamics Model of Epithelial Convergent Extension. 上皮汇聚延伸的几何张力动力学模型
Pub Date : 2024-10-02
Nikolas H Claussen, Fridtjof Brauns, Boris I Shraiman

Convergent extension of epithelial tissue is a key motif of animal morphogenesis. On a coarse scale, cell motion resembles laminar fluid flow; yet in contrast to a fluid, epithelial cells adhere to each other and maintain the tissue layer under actively generated internal tension. To resolve this apparent paradox, we formulate a model in which tissue flow in the tension-dominated regime occurs through adiabatic remodeling of force balance in the network of adherens junctions. We propose that the slow dynamics within the manifold of force-balanced configurations is driven by positive feedback on myosin-generated cytoskeletal tension. Shifting force balance within a tension network causes active cell rearrangements (T1 transitions) resulting in net tissue deformation oriented by initial tension anisotropy. Strikingly, we find that the total extent of tissue deformation depends on the initial cellular packing order. T1s degrade this order so that tissue flow is self-limiting. We explain these findings by showing that coordination of T1s depends on coherence in local tension configurations, quantified by a geometric order parameter in tension space. Our model reproduces the salient tissue- and cell-scale features of germ band elongation during Drosophila gastrulation, in particular the slowdown of tissue flow after approximately twofold longation concomitant with a loss of order in tension configurations. This suggests local cell geometry contains morphogenetic information and yields experimentally testable predictions. Defining biologically controlled active tension dynamics on the manifold of force-balanced states may provide a general approach to the description of morphogenetic flow.

上皮组织通过会聚延伸而伸长是动物形态发生的一个关键模式。从粗略的尺度来看,细胞运动类似于层状流体流动;然而与流体相反,上皮细胞在主动产生的内部张力作用下相互粘附并维持组织层。为了解决这个明显的悖论,我们建立了一个模型,在这个模型中,组织流动是通过细胞力平衡的绝热重塑引起局部细胞重新排列而发生的。我们提出,力平衡的逐渐移动是由肌球蛋白产生的细胞骨架张力的正反馈引起的。张力网络内的力平衡变化会导致以全球张力各向异性为导向的活跃 T1。细胞对形状变化的刚性将定向内部重新排列转化为净组织变形。令人震惊的是,我们发现组织延伸的总量取决于各向异性的初始大小和细胞的排列顺序。T1 会降低这种秩序,从而使组织流动受到自我限制。我们对这些发现的解释是,T1s 的协调取决于局部张力配置的一致性,并通过张力空间中的某个阶次参数进行量化。我们的模型再现了果蝇胃形成过程中生殖带伸长在组织和细胞尺度上的显著特征,特别是在大约伸长两倍后,组织流动速度减慢,同时张力构型失去了有序性。这表明局部细胞几何包含形态发生信息,并可在未来实验中进行预测。此外,我们的重点是在力平衡状态的流形上定义生物控制的主动张力动力学,这可能为形态发生流的描述提供了一种通用方法。
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引用次数: 0
Learning Molecular Representation in a Cell. 学习细胞中的分子表征
Pub Date : 2024-10-02
Gang Liu, Srijit Seal, John Arevalo, Zhenwen Liang, Anne E Carpenter, Meng Jiang, Shantanu Singh

Predicting drug efficacy and safety in vivo requires information on biological responses (e.g., cell morphology and gene expression) to small molecule perturbations. However, current molecular representation learning methods do not provide a comprehensive view of cell states under these perturbations and struggle to remove noise, hindering model generalization. We introduce the Information Alignment (InfoAlign) approach to learn molecular representations through the information bottleneck method in cells. We integrate molecules and cellular response data as nodes into a context graph, connecting them with weighted edges based on chemical, biological, and computational criteria. For each molecule in a training batch, InfoAlign optimizes the encoder's latent representation with a minimality objective to discard redundant structural information. A sufficiency objective decodes the representation to align with different feature spaces from the molecule's neighborhood in the context graph. We demonstrate that the proposed sufficiency objective for alignment is tighter than existing encoder-based contrastive methods. Empirically, we validate representations from InfoAlign in two downstream applications: molecular property prediction against up to 27 baseline methods across four datasets, plus zero-shot molecule-morphology matching.

预测药物在体内的疗效和安全性需要了解小分子扰动的生物反应(如细胞形态和基因表达)。然而,目前的分子表征学习方法无法提供这些扰动下细胞状态的全面视图,而且难以去除噪声,阻碍了模型的泛化。我们引入了信息对齐(InfoAlign)方法,通过细胞中的信息瓶颈法来学习分子表征。我们将分子和细胞反应数据作为节点整合到上下文图中,并根据化学、生物和计算标准用加权边将它们连接起来。对于训练批次中的每个分子,InfoAlign 都会以最小化为目标优化编码器的潜在表征,以摒弃多余的结构信息。充分性目标对表征进行解码,以便与上下文图中分子邻域的不同特征空间对齐。我们证明,所提出的对齐充分性目标比现有的基于编码器的对比方法更严密。根据经验,我们在两个下游任务中验证了来自 InfoAlign 的表征:在四个数据集上与多达 19 种基线方法进行分子性质预测,以及零点分子形态匹配。
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引用次数: 0
Generative models of MRI-derived neuroimaging features and associated dataset of 18,000 samples. NeuroSynth:MRI 衍生的神经解剖生成模型和包含 18,000 个样本的相关数据集。
Pub Date : 2024-10-01
Sai Spandana Chintapalli, Rongguang Wang, Zhijian Yang, Vasiliki Tassopoulou, Fanyang Yu, Vishnu Bashyam, Guray Erus, Pratik Chaudhari, Haochang Shou, Christos Davatzikos

Availability of large and diverse medical datasets is often challenged by privacy and data sharing restrictions. For successful application of machine learning techniques for disease diagnosis, prognosis, and precision medicine, large amounts of data are necessary for model building and optimization. To help overcome such limitations in the context of brain MRI, we present GenMIND: a collection of generative models of normative regional volumetric features derived from structural brain imaging. GenMIND models are trained on real brain imaging regional volumetric measures from the iSTAGING consortium, which encompasses over 40,000 MRI scans across 13 studies, incorporating covariates such as age, sex, and race. Leveraging GenMIND, we produce and offer 18,000 synthetic samples spanning the adult lifespan (ages 22-90 years), alongside the model's capability to generate unlimited data. Experimental results indicate that samples generated from GenMIND agree with the distributions obtained from real data. Most importantly, the generated normative data significantly enhance the accuracy of downstream machine learning models on tasks such as disease classification. Data and models are available at: https://huggingface.co/spaces/rongguangw/GenMIND.

由于隐私和数据共享方面的限制,大型、多样化医疗数据集的可用性常常受到挑战。要将机器学习技术成功应用于疾病诊断、预后和精准医疗,就需要大量数据来构建和优化模型。为了帮助克服脑部核磁共振成像中的这些限制,我们提出了 NeuroSynth:一个从脑部结构成像中提取的规范区域容积特征的生成模型集合。NeuroSynth 模型是根据 iSTAGING 联合体的真实脑成像区域容积测量结果训练而成的,该联合体包含 13 项研究中的 40,000 多张 MRI 扫描图像,并纳入了年龄、性别和种族等协变量。利用 NeuroSynth,我们制作并提供了 18,000 个合成样本,这些样本跨越了成年人的生命周期(22-90 岁),同时该模型还具有生成无限数据的能力。实验结果表明,NeuroSynth 生成的样本与从真实数据中获得的分布一致。最重要的是,生成的常模数据大大提高了下游机器学习模型在疾病分类等任务中的准确性。数据和模型可在以下网址获取:https://huggingface.co/spaces/rongguangw/neuro-synth。
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引用次数: 0
Nonparametric causal inference for optogenetics: sequential excursion effects for dynamic regimes. 闭环中的因果推理:连续偏移效应的边际结构模型。
Pub Date : 2024-10-01
Gabriel Loewinger, Alexander W Levis, Francisco Pereira

Optogenetics is a powerful neuroscience technique for studying how neural circuit manipulation affects behavior. Standard analysis conventions discard information and severely limit the scope of the causal questions that can be probed. To address this gap, we 1) draw connections to the causal inference literature on sequentially randomized experiments, 2) propose a non-parametric framework for analyzing "open-loop" (static regime) optogenetics behavioral experiments, 3) derive extensions of history-restricted marginal structural models for dynamic treatment regimes with positivity violations for "closed-loop" designs, and 4) propose a taxonomy of identifiable causal effects that encompass a far richer collection of scientific questions compared to standard methods. From another view, our work extends "excursion effect" methods, popularized recently in the mobile health literature, to enable estimation of causal contrasts for treatment sequences in the presence of positivity violations. We describe sufficient conditions for identifiability of the proposed causal estimands, and provide asymptotic statistical guarantees for a proposed inverse probability-weighted estimator, a multiply-robust estimator (for two intervention timepoints), a framework for hypothesis testing, and a computationally scalable implementation. Finally, we apply our framework to data from a recent neuroscience study and show how it provides insight into causal effects of optogenetics on behavior that are obscured by standard analyses.

光遗传学被广泛用于研究神经回路操作对行为的影响。然而,由于这方面的因果推理方法研究很少,导致分析习惯性地丢弃信息,并限制了可以提出的科学问题。为了填补这一空白,我们引入了一个非参数因果推理框架,用于分析 "闭环 "设计,该设计使用基于协变量分配治疗的动态策略。在这种情况下,标准方法可能会引入偏差并掩盖因果效应。基于因果推断中的顺序随机实验文献,我们的方法扩展了动态制度的历史限制边际结构模型。在实践中,我们的框架可以识别光遗传学对逐次试验行为的各种因果效应,如快效/慢效、剂量-反应、相加/拮抗、下限/上限等。重要的是,它不需要阴性对照就能做到这一点,并能估计因果效应的大小是如何在不同时间点上演变的。从另一个角度看,我们的工作扩展了 "游离效应 "方法--这在移动健康文献中很流行--使我们能够在存在违反正向性的情况下,估计长度大于 1 的处理序列的因果对比。我们得出了严格的统计保证,从而可以对这些因果效应进行假设检验。我们在最近一项关于多巴胺能活动对学习的影响的研究数据中演示了我们的方法,并展示了我们的方法是如何揭示标准分析中被掩盖的相关效应的。
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引用次数: 0
Deep Learning for Protein-Ligand Docking: Are We There Yet? 蛋白质配体对接的深度学习:我们成功了吗?
Pub Date : 2024-09-30
Alex Morehead, Nabin Giri, Jian Liu, Jianlin Cheng

The effects of ligand binding on protein structures and their in vivo functions carry numerous implications for modern biomedical research and biotechnology development efforts such as drug discovery. Although several deep learning (DL) methods and benchmarks designed for protein-ligand docking have recently been introduced, to date no prior works have systematically studied the behavior of docking methods within the broadly applicable context of (1) using predicted (apo) protein structures for docking (e.g., for applicability to unknown structures); (2) docking multiple ligands concurrently to a given target protein (e.g., for enzyme design); and (3) having no prior knowledge of binding pockets (e.g., for unknown pocket generalization). To enable a deeper understanding of docking methods' real-world utility, we introduce PoseBench, the first comprehensive benchmark for broadly applicable protein-ligand docking. PoseBench enables researchers to rigorously and systematically evaluate DL docking methods for apo-to-holo protein-ligand docking and protein-ligand structure generation using both single and multi-ligand benchmark datasets, the latter of which we introduce for the first time to the DL community. Empirically, using PoseBench, we find that (1) DL methods consistently outperform conventional docking algorithms; (2) most recent DL docking methods fail to generalize to multi-ligand protein targets; and (3) training DL methods with physics-informed loss functions on diverse clusters of protein-ligand complexes is a promising direction for future work. Code, data, tutorials, and benchmark results are available at https://github.com/BioinfoMachineLearning/PoseBench.

配体结合对蛋白质结构及其体内功能的影响对现代生物医学研究和生物技术开发工作(如药物发现)有诸多影响。虽然最近推出了几种专为蛋白质配体对接设计的深度学习(DL)方法和基准,但迄今为止,还没有任何研究系统地研究了对接方法在以下实际情况下的行为:(1)预测的(apo)蛋白质结构;(2)多种配体同时与给定的目标蛋白质结合;(3)事先不知道结合口袋。为了更深入地了解对接方法在现实世界中的实用性,我们推出了 PoseBench,这是第一个用于实际蛋白质配体对接的综合基准。PoseBench 使研究人员能够利用单配体和多配体基准数据集,严格、系统地评估用于apo-to-holo蛋白质配体对接和蛋白质配体结构生成的DL对接方法。通过使用 PoseBench 进行实证分析,我们发现除一种方法外,所有最新的 DL 对接方法都无法通用于多配体蛋白质目标,而且基于模板的对接算法在多配体对接方面的表现与最新的单配体 DL 对接方法相同或更好,这为未来的工作提出了改进领域。有关代码、数据、教程和基准结果,请访问 https://github.com/BioinfoMachineLearning/PoseBench。
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引用次数: 0
Virtual Lung Screening Trial (VLST): An In Silico Replica of the National Lung Screening Trial for Lung Cancer Detection. VLST:利用虚拟成像检测肺癌的虚拟肺部筛查试验。
Pub Date : 2024-09-24
Fakrul Islam Tushar, Liesbeth Vancoillie, Cindy McCabe, Amareswararao Kavuri, Lavsen Dahal, Brian Harrawood, Milo Fryling, Mojtaba Zarei, Saman Sotoudeh-Paima, Fong Chi Ho, Dhrubajyoti Ghosh, Sheng Luo, W Paul Segars, Ehsan Abadi, Kyle J Lafata, Ehsan Samei, Joseph Y Lo

Importance: Clinical imaging trials are crucial for definitive evaluation of medical innovations, but the process is inefficient, expensive, and ethically-constrained. Virtual imaging trial (VIT) approach address these limitations by emulating the components of a clinical trial. An in silico rendition of the National Lung Screening Trial (NCLS) via Virtual Lung Screening Trial (VLST) demonstrates the promise of VITs to expedite clinical trials, reduce risks to subjects, and facilitate the optimal use of imaging technologies in clinical settings.

Design, setting, and participants: A diverse virtual patient population of 294 subjects was created from human models (XCAT) emulating the characteristics of cases on NLST, with two types of simulated lung nodules. The cohort was assessed using simulated CT and CXR systems to generate images that reflect the NLST imaging technologies. Deep learning models trained for lesion detection in CXR and CT served as virtual readers.

Results: The study analyzed 294 CT and CXR simulated images from 294 virtual patients, with a lesion-level AUC of 0.81 (95% CI: 0.79-0.84) for CT and 0.56 (95% CI: 0.54-0.58) for CXR. At the patient level, CT demonstrated an AUC of 0.84 (95% CI: 0.80-0.89), compared to 0.52 (95% CI: 0.45-0.58) for CXR. Subgroup analyses on CT results indicated superior detection of homogeneous lesions (lesion-level AUC 0.97) than heterogeneous lesions (lesion-level AUC 0.72). Performance was particularly high for identifying larger nodules (AUC of 0.98 for nodules > 8 mm). The VLST results closely mirrored the NLST, particularly in size-based detection trends, with CT achieving high AUCs for nodules > 8 mm and similar challenges in detecting smaller nodules.

Conclusion and relevance: The VIT results closely replicated those of the earlier NLST, underscoring its potential to replicate real clinical imaging trials.

重要性:肺癌筛查的效果会受到所用成像模式的显著影响。这项虚拟肺部筛查试验(VLST)满足了肺癌诊断对精确性的迫切需求,并有可能减少临床环境中不必要的辐射暴露:建立一个虚拟成像试验(VIT)平台,准确模拟真实世界的肺筛查试验(LST),以评估 CT 和 CXR 模式的诊断准确性:利用计算模型和机器学习算法,我们创建了一个多样化的虚拟患者群体。主要结果和测量指标:主要结果是不同病变类型和大小的 CT 和 CXR 模式的曲线下面积(AUC)差异:研究分析了来自 313 名虚拟患者的 298 张 CT 和 313 张 CXR 模拟图像,CT 的病灶级 AUC 为 0.81(95% CI:0.78-0.84),CXR 为 0.55(95% CI:0.53-0.56)。在患者层面,CT 的 AUC 为 0.85(95% CI:0.80-0.89),而 CXR 为 0.53(95% CI:0.47-0.60)。亚组分析表明,CT 在检测同质性病变(病变水平的 AUC 为 0.97)和异质性病变(病变水平的 AUC 为 0.71)以及识别较大结节(大于 8 毫米的结节的 AUC 为 0.98)方面表现出色:VIT 平台验证了 CT 的诊断准确性优于 CXR,尤其是对较小结节的诊断准确性,凸显了其复制真实临床成像试验的潜力。这些研究结果提倡在评估和改进基于成像的诊断工具时整合虚拟试验。
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引用次数: 0
Real-Time Machine Learning Strategies for a New Kind of Neuroscience Experiments. 新型神经科学实验的实时机器学习策略
Pub Date : 2024-09-23
Ayesha Vermani, Matthew Dowling, Hyungju Jeon, Ian Jordan, Josue Nassar, Yves Bernaerts, Yuan Zhao, Steven Van Vaerenbergh, Il Memming Park

Function and dysfunctions of neural systems are tied to the temporal evolution of neural states. The current limitations in showing their causal role stem largely from the absence of tools capable of probing the brain's internal state in real-time. This gap restricts the scope of experiments vital for advancing both fundamental and clinical neuroscience. Recent advances in real-time machine learning technologies, particularly in analyzing neural time series as nonlinear stochastic dynamical systems, are beginning to bridge this gap. These technologies enable immediate interpretation of and interaction with neural systems, offering new insights into neural computation. However, several significant challenges remain. Issues such as slow convergence rates, high-dimensional data complexities, structured noise, non-identifiability, and a general lack of inductive biases tailored for neural dynamics are key hurdles. Overcoming these challenges is crucial for the full realization of real-time neural data analysis for the causal investigation of neural computation and advanced perturbation based brain machine interfaces. In this paper, we provide a comprehensive perspective on the current state of the field, focusing on these persistent issues and outlining potential paths forward. We emphasize the importance of large-scale integrative neuroscience initiatives and the role of meta-learning in overcoming these challenges. These approaches represent promising research directions that could redefine the landscape of neuroscience experiments and brain-machine interfaces, facilitating breakthroughs in understanding brain function, and treatment of neurological disorders.

神经系统的功能和功能障碍与神经状态的时间演变息息相关。目前在显示其因果作用方面的局限性主要源于缺乏能够实时探测大脑内部状态的工具。这一空白限制了对推进基础和临床神经科学至关重要的实验范围。实时机器学习技术的最新进展,尤其是将神经时间序列作为非线性随机动力系统进行分析的技术,正开始弥补这一差距。这些技术能够立即解释神经系统并与之互动,为神经计算提供新的见解。然而,一些重大挑战依然存在。收敛速度慢、高维数据复杂性、结构噪声、不可识别性以及普遍缺乏针对神经动力学的归纳偏差等问题都是关键障碍。要全面实现实时神经数据分析,用于神经计算的因果关系研究和基于扰动的高级脑机接口,克服这些挑战至关重要。在本文中,我们从全面的视角探讨了该领域的现状,重点关注了这些长期存在的问题,并勾勒出了潜在的前进道路。我们强调大规模综合神经科学计划的重要性,以及元学习在克服这些挑战中的作用。这些方法代表了大有可为的研究方向,可以重新定义神经科学实验和脑机接口的格局,促进在理解大脑功能和治疗神经系统疾病方面取得突破。
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引用次数: 0
Genomic Language Models: Opportunities and Challenges. 基因组语言模型:机遇与挑战
Pub Date : 2024-09-22
Gonzalo Benegas, Chengzhong Ye, Carlos Albors, Jianan Canal Li, Yun S Song

Large language models (LLMs) are having transformative impacts across a wide range of scientific fields, particularly in the biomedical sciences. Just as the goal of Natural Language Processing is to understand sequences of words, a major objective in biology is to understand biological sequences. Genomic Language Models (gLMs), which are LLMs trained on DNA sequences, have the potential to significantly advance our understanding of genomes and how DNA elements at various scales interact to give rise to complex functions. To showcase this potential, we highlight key applications of gLMs, including functional constraint prediction, sequence design, and transfer learning. Despite notable recent progress, however, developing effective and efficient gLMs presents numerous challenges, especially for species with large, complex genomes. Here, we discuss major considerations for developing and evaluating gLMs.

大型语言模型(LLMs)正在广泛的科学领域产生变革性影响,尤其是在生物医学科学领域。正如自然语言处理的目标是理解单词序列一样,生物学的一个主要目标是理解生物序列。基因组语言模型(gLMs)是在 DNA 序列上训练的 LLMs,有可能极大地推动我们对基因组以及不同尺度的 DNA 元素如何相互作用产生复杂功能的理解。在这篇综述中,我们将重点介绍 gLMs 的关键应用,包括适配性预测、序列设计和迁移学习,从而展示这种潜力。然而,尽管最近取得了显著进展,开发有效和高效的 gLMs 仍然面临着诸多挑战,尤其是对于基因组庞大而复杂的物种而言。我们将讨论开发和评估 gLMs 的主要注意事项。
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