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Smart microscope captures aggregation of misfolded proteins
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EPFL研究人员开发出一种先进的显微成像系统,利用深度学习技术实时追踪和预测蛋白质聚集的发生,并分析其生物力学特性。该系统能够识别并量化蛋白质聚集的早期迹象,即使在肉眼无法区分正常与异常蛋白质的情况下也能提前预警。通过结合多种显微镜技术并优化成像效率,该方法显著减少了荧光标记的使用,避免了对细胞样本生物物理性质的影响。这项创新不仅推动了智能显微镜技术的发展,为理解和治疗阿尔茨海默病、帕金森病等神经退行性疾病提供了新的视角和工具,也为药物研发和精准医疗开辟了新途径。

🔬 **AI驱动的智能显微镜预测蛋白质聚集**:EPFL研究人员开发了一种基于深度学习的成像系统,能够实时追踪蛋白质聚集,甚至能在其开始前进行预测。该系统通过分析大量细胞图像,学习识别蛋白质聚集的早期特征,从而实现对神经退行性疾病关键病理过程的预警。

💡 **减少荧光标记,保留生物物理特性**:该技术最大限度地提高了成像效率,并减少了荧光标记的使用。荧光标记可能改变细胞样本的生物物理性质,影响分析的准确性。通过采用“无标记”成像方法,研究人员能够更真实地研究蛋白质聚集过程及其生物力学特性。

🌟 **结合多种显微镜技术,实现精准分析**:该系统结合了多种显微镜方法,包括在检测到蛋白质聚集时触发的布里渊显微镜(Brillouin microscope)。布里渊显微镜能够分析散射光,从而表征聚集体的生物力学特性,如弹性。AI算法的引入弥补了传统布里渊显微镜成像速度慢的缺点,实现了对快速演变过程的动态捕捉。

🎯 **加速神经退行性疾病研究与药物开发**:该研究成果对于理解和治疗 Huntington's、Alzheimer's 和 Parkinson's 等神经退行性疾病具有重要意义。通过更早、更精确地识别和分析蛋白质聚集体,研究人员能够深入了解疾病的发生机制,并为开发更有效的治疗方案和药物提供关键的生物物理见解。

🚀 **开创“无标记”智能显微镜新时代**:这项工作是首个展示“自主驾驶”系统整合“无标记”显微镜方法的出版物,预示着智能显微镜技术将更加易于生物学家采用。这为探索蛋白质聚集的毒性寡聚体(toxic oligomers)开辟了新的研究途径,有望加速开发针对神经退行性疾病的精准疗法。

Thematic illustration of smart microscopy for detecting protein aggregation. 2025 Alexey Chizhik/EPFL – CC-BY-SA 4.0.

By Celia Luterbacher

EPFL researchers have developed a microscope that can be used to predict the onset of misfolded protein aggregation – a hallmark of neurodegenerative disease – as well as analyze the biomechanical properties of these aggregates.

The accumulation of misfolded proteins in the brain is central to the progression of neurodegenerative diseases like Huntington’s, Alzheimer’s and Parkinson’s. But to the human eye, proteins that are destined to form harmful aggregates don’t look any different than normal proteins. The formation of such aggregates also tends to happen randomly and relatively rapidly – on the scale of minutes. The ability to identify and characterize protein aggregates is essential for understanding and fighting neurodegenerative diseases.

Now, using deep learning, EPFL researchers have developed an imaging system that leverages multiple microscopy methods to track and analyze protein aggregation in real time – and even anticipate it before it begins. In addition to maximizing imaging efficiency, the approach minimizes the use of fluorescent labels, which can alter the biophysical properties of cell samples and impede accurate analysis.

“This is the first time we have been able to accurately foresee the formation of these protein aggregates,” says recent EPFL PhD graduate Khalid Ibrahim. “Because their biomechanical properties are linked to diseases and the disruption of cellular function, understanding how these properties evolve throughout the aggregation process will lead to fundamental understanding essential for developing solutions.”

Ibrahim has published this work in Nature Communications with Aleksandra Radenovic, head of the Laboratory of Nanoscale Biology in the School of Engineering, and Hilal Lashuel in the School of Life Sciences, in collaboration with Carlo Bevilacqua and Robert Prevedel at the European Molecular Biology Laboratory in Heidelberg, Germany. The project is the result of a longstanding collaboration between the Lashuel and Radenovic labs that unites complementary expertise in neurodegeneration and advanced live-cell imaging technologies. “This project was born out of a motivation to build methods that reveal new biophysical insights, and it is exciting to see how this vision has now borne fruit,” Radenovic says.

Witnessing the birth of a protein aggregate

In their first collaborative effort, led by Ibrahim, the team developed a deep learning algorithm that was able to detect mature protein aggregates when presented with unlabeled images of living cells. The new study builds on that work with an image classification version of the algorithm that analyzes such images in real time: when this algorithm detects a mature protein aggregate, it triggers a Brillouin microscope, which analyzes scattered light to characterize the aggregates’ biomechanical properties like elasticity.

Normally, the slow imaging speed of a Brillouin microscope would make it a poor choice for studying rapidly evolving protein aggregates. But thanks to the EPFL team’s AI-driven approach, the Brillouin microscope is only switched on when a protein aggregate is detected, speeding up the entire process while opening new avenues in smart microscopy.

“This is the first publication that shows the impressive potential for self-driving systems to incorporate label-free microscopy methods, which should allow more biologists to adopt rapidly evolving smart microscopy techniques,” Ibrahim says.

Because the image classification algorithm only targets mature protein aggregates, the researchers still needed to go further if they wanted to catch aggregate formation in the act. For this, they developed a second deep learning algorithm and trained it on fluorescently labelled images of proteins in living cells. This ‘aggregation-onset’ detection algorithm can differentiate between near-identical images to correctly identify when aggregation will occur with 91% accuracy. Once this onset is spotted, the self-driving system again switches on Brillouin imaging to provide a never-before-seen window into protein aggregation. For the first time, the biomechanics of this process can be captured dynamically as it occurs.

Lashuel emphasizes that in addition to advancing smart microscopy, this work has important implications for drug discovery and precision medicine. “Label-free imaging approaches create entirely new ways to study and target small protein aggregates called toxic oligomers, which are thought to play central causative roles in neurodegeneration,” he says. “We are excited to build on these achievements and pave the way for drug development platforms that will accelerate more effective therapies for neurodegenerative diseases.”

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AI显微镜 蛋白质聚集 神经退行性疾病 深度学习 无标记成像
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