人工智能支持的透射电子显微照片自动分析评估化疗对三阴性乳腺癌线粒体形态的影响。

Argenis Arriojas, Mokryun L Baek, Mariah J Berner, Jiaqi Wang, Joseph Duraisingh, Alexander Zhurkevich, Antentor Othrell Hinton, Matthew D Meyer, Lacey E Dobrolecki, Michael T Lewis, Kourosh Zarringhalam, Gloria V Echeverria
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引用次数: 0

摘要

透射电子显微镜(TEM)的进步使生物标本的深入研究成为可能,为亚细胞分辨率的大规模成像实验提供了新的途径。线粒体结构在调节线粒体的多方面功能方面起着至关重要的作用,因此在癌症生物学中越来越受到关注。我们和其他人已经确定了线粒体在三阴性乳腺癌(TNBC)中的关键作用,TNBC是一种治疗选择有限的侵袭性乳腺癌亚型。基于我们之前的工作,证明了线粒体结构动力学在化疗难治性TNBC细胞的代谢适应和存活中的调节作用,我们试图将这些发现扩展到透射电子显微镜的大规模分析。在这里,我们提出了一个用于自动注释和评估线粒体形态和特征量化的UNet人工智能(AI)模型。我们的模型在11039个人工注释的线粒体上进行了训练,这些线粒体来自125张显微照片,这些照片来自各种原位患者来源的异种移植(PDX)小鼠模型肿瘤和贴壁细胞培养物。该模型在像素级的测试显微图上获得了0.85的F1分数。为了验证我们的模型检测预期线粒体结构特征的能力,我们利用了小鼠原代骨骼肌细胞的显微照片,这些细胞经过基因修饰,缺乏动力蛋白相关蛋白1 (Drp1)。该算法成功地检测到线粒体伸长的显著增加,与Drp1作为线粒体裂变驱动因素的既定作用一致。此外,我们对体外和体内TNBC模型进行了临床常用的TNBC常规化疗治疗,包括阿霉素、卡铂、紫杉醇和多西紫杉醇(DTX)。我们在体外和体内TNBC模型中发现了大量的线粒体结构在样本内的异质性,并观察到dtx处理标本中线粒体伸长的一致减少。我们在TNBC的高转移性PDX模型中比较了乳腺肿瘤和匹配的肺转移灶,发现转移灶中线粒体长度显著减少。我们的大型精心整理的数据集提供了高统计能力,可以检测治疗后遗留的残余细胞中线粒体形状和大小的频繁化疗引起的变化。我们的AI模型成功应用于捕获线粒体结构,标志着线粒体结构的高通量分析向前迈进了一步,增强了我们对形态变化如何与化疗疗效和作用机制相关的理解。最后,我们的大型人工管理的电子显微图像数据集(现已公开)可作为开发,基准测试和应用计算模型的独特金标准资源,同时进一步推进线粒体形态及其对癌症生物学的影响的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence-enabled automated analysis of transmission electron micrographs to evaluate chemotherapy impact on mitochondrial morphology in triple negative breast cancer.

Advancements in transmission electron microscopy (TEM) have enabled in-depth studies of biological specimens, offering new avenues to large-scale imaging experiments with subcellular resolution. Mitochondrial structure is of growing interest in cancer biology due to its crucial role in regulating the multi-faceted functions of mitochondria. We and others have established the crucial role of mitochondria in triple-negative breast cancer (TNBC), an aggressive subtype of breast cancer with limited therapeutic options. Building upon our previous work demonstrating the regulatory role of mitochondrial structure dynamics in metabolic adaptation and survival of chemotherapy-refractory TNBC cells, we sought to extend those findings to a large-scale analysis of transmission electron micrographs. Here we present a UNet artificial intelligence (AI) model for automatic annotation and assessment of mitochondrial morphology and feature quantification. Our model is trained on 11,039 manually annotated mitochondria across 125 micrographs derived from a variety of orthotopic patient-derived xenograft (PDX) mouse model tumors and adherent cell cultures. The model achieves an F1 score of 0.85 on test micrographs at the pixel level. To validate the ability of our model to detect expected mitochondrial structural features, we utilized micrographs from mouse primary skeletal muscle cells genetically modified to lack Dynamin-related protein 1 (Drp1). The algorithm successfully detected a significant increase in mitochondrial elongation, in alignment with the well-established role of Drp1 as a driver of mitochondrial fission. Further, we subjected in vitro and in vivo TNBC models to conventional chemotherapy treatments commonly used for clinical management of TNBC, including doxorubicin, carboplatin, paclitaxel, and docetaxel (DTX). We found substantial within-sample heterogeneity of mitochondrial structure in both in vitro and in vivo TNBC models and observed a consistent reduction in mitochondrial elongation in DTX-treated specimens. We went on to compare mammary tumors and matched lung metastases in a highly metastatic PDX model of TNBC, uncovering significant reduction in mitochondrial length in metastatic lesions. Our large, curated dataset provides high statistical power to detect frequent chemotherapy-induced shifts in mitochondrial shapes and sizes in residual cells left behind after treatment. The successful application of our AI model to capture mitochondrial structure marks a step forward in high-throughput analysis of mitochondrial structures, enhancing our understanding of how morphological changes may relate to chemotherapy efficacy and mechanism of action. Finally, our large, manually curated electron micrograph dataset - now publicly available - serves as a unique gold-standard resource for developing, benchmarking, and applying computational models, while further advancing investigations into mitochondrial morphology and its impact on cancer biology.

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