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Thyroid Cancer Prediction Using Gene Expression Profile, Pharmacogenomic Variants And Quantum Image Processing In Deep Learning Platform-A Theranostic Approach

机译:深度学习平台中使用基因表达谱,药物基因组变异和量子图像处理预测甲状腺癌的治疗方法

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The biological bigdata analysis is always a challenge to the data scientists because of the increasing size of the data day by day and the inadequacy of binary computing environment for addressing such data. The pharmacogenomic database has been used in the present work to design and develop a predictive machine for thyroid cancer for the South Asian Population based upon deep ‘Convolution Neural Networking (CNN). The individual variation to proneness of the disease as well as susceptibility towards drugs seek pharmacogenomic analysis with large population-wise datasets including genomics and epigenomics. In such cases, a quantum computing platform with maximum number of qubits has been suggested to make the calculations fast and accurate. The Gene expression profiling corresponding to thyroid cancer mutations have been carried out to identify the most expressed genes. The ‘gene expression profile pattern’ has been used as the major attribute to the machine learning process. The predictions have been made from 10068 microscopic images of thyroid cancer samples collected from the South Asian Populations and using a ‘2 - qubits quantum computing’ platform. With this small database consisting of only 10068 images, an appreciably high prediction accuracy has been achieved.
机译:生物大数据分析一直是数据科学家面临的挑战,因为数据的大小每天都在增加,并且二进制计算环境不足以处理此类数据。在目前的工作中,已经使用药物基因组学数据库来设计和开发基于深度'卷积神经网络(CNN)的南亚人群甲状腺癌的预测机。疾病易发性和对药物的易感性的个体差异可通过大量的包括基因组学和表观基因组学在内的大规模数据集寻求药物基因组学分析。在这种情况下,建议使用量子位数最大的量子计算平台来使计算快速而准确。已经进行了对应于甲状腺癌突变的基因表达谱分析,以鉴定表达最多的基因。 “基因表达谱模式”已被用作机器学习过程的主要属性。这些预测是根据使用南亚人群收集的甲状腺癌样本的10068幅显微图像并使用“ 2量子位量子计算”平台得出的。使用仅包含10068张图像的小型数据库,已实现了相当高的预测精度。

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