MIT News - Artificial intelligence 12小时前
New AI system uncovers hidden cell subtypes, boosts precision medicine
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CellLENS是一款由MIT、哈佛等机构合作开发的深度学习AI工具,通过融合RNA、蛋白质分子表达、细胞位置和显微镜图像等多维度数据,构建单个细胞的综合数字档案。该工具能够识别细胞的生物学特性,即使在外观相似的情况下,也能区分出行为差异。CellLENS在研究中揭示了免疫细胞亚型与疾病进程的关系,为癌症诊断和免疫疗法提供了新的视角,有望加速靶向治疗的发展。

🔬CellLENS利用卷积神经网络和图神经网络,将细胞的RNA、蛋白质表达、细胞位置和显微镜图像信息整合,构建细胞的综合数字档案,从而全面分析细胞的生物学特征。

📍该工具能够识别细胞微环境,即使在外观相似的情况下,也能区分出行为差异,例如,它可以区分出处于肿瘤边界的T细胞,从而更精准地了解细胞的功能和行为。

💡CellLENS在研究中揭示了免疫细胞亚型与疾病进程的关系,例如肿瘤浸润或免疫抑制。这些发现有助于科学家更好地理解免疫系统与肿瘤的相互作用,为癌症诊断和免疫疗法提供新思路。

🧪CellLENS可以帮助识别新的生物标志物,提供关于病变细胞的详细信息,从而促进靶向治疗的开发。例如,研究发现,免疫疗法可能只针对肿瘤边界的细胞,CellLENS可以提供更多信息以提高疗效。

In order to produce effective targeted therapies for cancer, scientists need to isolate the genetic and phenotypic characteristics of cancer cells, both within and across different tumors, because those differences impact how tumors respond to treatment.

Part of this work requires a deep understanding of the RNA or protein molecules each cancer cell expresses, where it is located in the tumor, and what it looks like under a microscope.

Traditionally, scientists have looked at one or more of these aspects separately, but now a new deep learning AI tool, CellLENS (Cell Local Environment and Neighborhood Scan), fuses all three domains together, using a combination of convolutional neural networks and graph neural networks to build a comprehensive digital profile for every single cell. This allows the system to group cells with similar biology — effectively separating even those that appear very similar in isolation, but behave differently depending on their surroundings.

The study, published recently in Nature Immunology, details the results of a collaboration between researchers from MIT, Harvard Medical School, Yale University, Stanford University, and University of Pennsylvania — an effort led by Bokai Zhu, an MIT postdoc and member of the Broad Institute of MIT and Harvard and the Ragon Institute of MGH, MIT, and Harvard.

Zhu explains the impact of this new tool: “Initially we would say, oh, I found a cell. This is called a T cell. Using the same dataset, by applying CellLENS, now I can say this is a T cell, and it is currently attacking a specific tumor boundary in a patient.

“I can use existing information to better define what a cell is, what is the subpopulation of that cell, what that cell is doing, and what is the potential functional readout of that cell. This method may be used to identify a new biomarker, which provides specific and detailed information about diseased cells, allowing for more targeted therapy development.”

This is a critical advance because current methodologies often miss critical molecular or contextual information — for example, immunotherapies may target cells that only exist at the boundary of a tumor, limiting efficacy. By using deep learning, the researchers can detect many different layers of information with CellLENS, including morphology and where the cell is spatially in a tissue.

When applied to samples from healthy tissue and several types of cancer, including lymphoma and liver cancer, CellLENS uncovered rare immune cell subtypes and revealed how their activity and location relate to disease processes — such as tumor infiltration or immune suppression.

These discoveries could help scientists better understand how the immune system interacts with tumors and pave the way for more precise cancer diagnostics and immunotherapies.

“I’m extremely excited by the potential of new AI tools, like CellLENS, to help us more holistically understand aberrant cellular behaviors within tissues,” says co-author Alex K. Shalek, the director of the Institute for Medical Engineering and Science (IMES), the J. W. Kieckhefer Professor in IMES and Chemistry, and an extramural member of the Koch Institute for Integrative Cancer Research at MIT, as well as an Institute member of the Broad Institute and a member of the Ragon Institute. “We can now measure a tremendous amount of information about individual cells and their tissue contexts with cutting-edge, multi-omic assays. Effectively leveraging that data to nominate new therapeutic leads is a critical step in developing improved interventions. When coupled with the right input data and careful downsteam validations, such tools promise to accelerate our ability to positively impact human health and wellness.”

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CellLENS 人工智能 癌症治疗 深度学习
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