Machine learning enabled classification of lung cancer cell lines co-cultured with fibroblasts with lightweight convolutional neural network for initial diagnosis.

IF 9 2区 医学 Q1 CELL BIOLOGY Journal of Biomedical Science Pub Date : 2024-08-23 DOI:10.1186/s12929-024-01071-0
Adam Germain, Alex Sabol, Anjani Chavali, Giles Fitzwilliams, Alexa Cooper, Sandra Khuon, Bailey Green, Calvin Kong, John Minna, Young-Tae Kim
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Abstract

Background: Identification of lung cancer subtypes is critical for successful treatment in patients, especially those in advanced stages. Many advanced and personal treatments require knowledge of specific mutations, as well as up- and down-regulations of genes, for effective targeting of the cancer cells. While many studies focus on individual cell structures and delve deeper into gene sequencing, the present study proposes a machine learning method for lung cancer classification based on low-magnification cancer outgrowth patterns in a 2D co-culture environment.

Methods: Using a magnetic well plate holder, circular pattern lung cancer cell clusters were generated among fibroblasts, and daily images were captured to monitor cancer outgrowth over a 9-day period. These outgrowth images were then augmented and used to train a convolutional neural network (CNN) model based on the lightweight TinyVGG architecture. The model was trained with pairs of classes representing three subtypes of NSCLC: A549 (adenocarcinoma), H520 (squamous cell carcinoma), and H460 (large cell carcinoma). The objective was to assess whether this lightweight machine learning model could accurately classify the three lung cancer cell lines at different stages of cancer outgrowth. Additionally, cancer outgrowth images of two patient-derived lung cancer cells, one with the KRAS oncogene and the other with the EGFR oncogene, were captured and classified using the CNN model. This demonstration aimed to investigate the translational potential of machine learning-enabled lung cancer classification.

Results: The lightweight CNN model achieved over 93% classification accuracy at 1 day of outgrowth among A549, H460, and H520, and reached 100% classification accuracy at 7 days of outgrowth. Additionally, the model achieved 100% classification accuracy at 4 days for patient-derived lung cancer cells. Although these cells are classified as Adenocarcinoma, their outgrowth patterns vary depending on their oncogene expressions (KRAS or EGFR).

Conclusions: These results demonstrate that the lightweight CNN architecture, operating locally on a laptop without network or cloud connectivity, can effectively create a machine learning-enabled model capable of accurately classifying lung cancer cell subtypes, including those derived from patients, based upon their outgrowth patterns in the presence of surrounding fibroblasts. This advancement underscores the potential of machine learning to enhance early lung cancer subtyping, offering promising avenues for improving treatment outcomes in advanced stage-patients.

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利用轻量级卷积神经网络对与成纤维细胞共培养的肺癌细胞系进行机器学习分类,以进行初步诊断。
背景:肺癌亚型的确定对于患者,尤其是晚期患者的成功治疗至关重要。许多先进的个人治疗方法需要了解特定突变以及基因的上调和下调,以便有效地针对癌细胞进行治疗。许多研究关注单个细胞结构并深入研究基因测序,而本研究提出了一种基于二维共培养环境中低放大倍数癌症生长模式的肺癌分类机器学习方法:方法:使用磁性孔板支架,在成纤维细胞中生成圆形模式的肺癌细胞簇,并在 9 天内每天采集图像以监测癌细胞的生长。然后对这些生长图像进行增强,并用于训练基于轻量级 TinyVGG 架构的卷积神经网络 (CNN) 模型。该模型使用代表 NSCLC 三种亚型的成对类别进行训练:A549(腺癌)、H520(鳞状细胞癌)和 H460(大细胞癌)。目的是评估这种轻量级机器学习模型能否在癌症生长的不同阶段对三种肺癌细胞系进行准确分类。此外,还使用 CNN 模型捕获并分类了两个源自患者的肺癌细胞的癌症生长图像,其中一个带有 KRAS 癌基因,另一个带有表皮生长因子受体癌基因。该演示旨在研究机器学习肺癌分类的转化潜力:结果:轻量级 CNN 模型在 A549、H460 和 H520 生长 1 天时的分类准确率超过 93%,在生长 7 天时的分类准确率达到 100%。此外,该模型对源自患者的肺癌细胞的分类准确率在 4 天时达到了 100%。虽然这些细胞被归类为腺癌,但它们的生长模式因癌基因表达(KRAS 或 EGFR)而异:这些结果表明,轻量级 CNN 架构可在笔记本电脑上本地运行,无需网络或云连接,能够有效创建一个支持机器学习的模型,该模型能够根据肺癌细胞在周围成纤维细胞存在的情况下的生长模式,对肺癌细胞亚型(包括来自患者的肺癌细胞)进行准确分类。这一进展凸显了机器学习在加强早期肺癌亚型分类方面的潜力,为改善晚期患者的治疗效果提供了前景广阔的途径。
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来源期刊
Journal of Biomedical Science
Journal of Biomedical Science 医学-医学:研究与实验
CiteScore
18.50
自引率
0.90%
发文量
95
审稿时长
1 months
期刊介绍: The Journal of Biomedical Science is an open access, peer-reviewed journal that focuses on fundamental and molecular aspects of basic medical sciences. It emphasizes molecular studies of biomedical problems and mechanisms. The National Science and Technology Council (NSTC), Taiwan supports the journal and covers the publication costs for accepted articles. The journal aims to provide an international platform for interdisciplinary discussions and contribute to the advancement of medicine. It benefits both readers and authors by accelerating the dissemination of research information and providing maximum access to scholarly communication. All articles published in the Journal of Biomedical Science are included in various databases such as Biological Abstracts, BIOSIS, CABI, CAS, Citebase, Current contents, DOAJ, Embase, EmBiology, and Global Health, among others.
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