Artificial Intelligence Based Deep Bayesian Neural Network (DBNN) Toward Personalized Treatment of Leukemia with Stem Cells

Asma Khazaal Abdulsahib
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Abstract

The dynamic development of computer and software technology in recent years was accompanied by the expansion and widespread implementation of artificial intelligence (AI) based methods in many aspects of human life. A prominent field where rapid progress was observed are high‐throughput methods in biology that generate big amounts of data that need to be processed and analyzed. Therefore, AI methods are more and more applied in the biomedical field, among others for RNA‐protein binding sites prediction, DNA sequence function prediction, protein‐protein interaction prediction, or biomedical image classification. Stem cells are widely used in biomedical research, e.g., leukemia or other disease studies. Our proposed approach of Deep Bayesian Neural Network (DBNN) for the personalized treatment of leukemia cancer has shown a significant tested accuracy for the model. DBNNs used in this study was able to classify images with accuracy exceeding 98.73%. This study depicts that the DBNN can classify cell cultures only based on unstained light microscope images which allow their further use. Therefore, building a bayesian‐based model to great help during commercial cell culturing, and possibly a first step in the process of creating an automated/semiautomated neural network‐based model for classification of good and bad quality cultures when images of such will be available.
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基于人工智能的深度贝叶斯神经网络(DBNN)用于干细胞治疗白血病的个性化治疗
近年来,随着计算机和软件技术的蓬勃发展,基于人工智能(AI)的方法在人类生活的许多方面得到了扩展和广泛实施。观察到快速发展的一个突出领域是生物学中的高通量方法,这些方法产生大量需要处理和分析的数据。因此,人工智能方法越来越多地应用于生物医学领域,如RNA -蛋白质结合位点预测、DNA序列功能预测、蛋白质-蛋白质相互作用预测、生物医学图像分类等。干细胞广泛用于生物医学研究,例如白血病或其他疾病研究。我们提出的用于白血病个性化治疗的深度贝叶斯神经网络(DBNN)方法已显示出模型的显着测试准确性。本研究使用的dbnn对图像进行分类,准确率超过98.73%。本研究表明,DBNN只能根据未染色的光学显微镜图像对细胞培养物进行分类,从而允许其进一步使用。因此,建立一个基于贝叶斯的模型在商业细胞培养过程中有很大的帮助,并且可能是创建一个自动化/半自动化的基于神经网络的模型的过程的第一步,用于在有图像的情况下分类优质和劣质培养物。
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