A Novel Cell Density Prediction Design using Optimal Deep Learning with Salp Swarm Algorithm

G. Balde, Md. Abul Ala Walid, S. P, V. Yella, M. Soumya, Ravi Rastogi
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引用次数: 1

Abstract

Cell density prediction can be defined as the process of predicting the number of cells in a given quantity of a culture or cell suspension. It is considered a common practice in cell biology since cell density had a significant impact on cell behavior and can be utilized for monitoring the health and growth of cell culture. Precise prediction of cell density was significant for a range of applications in cell biology., which includes bioprocessing, cell-based assays, and cell culture. Therefore, this article develops a novel Cell Density Prediction design using Optimal Deep Learning with Salp Swarm Algorithm (CDP-ODLSSA) technique. The presented CDP-ODLSSA technique predicts the cell densities accurately on the images of cell suspensions or cultures. To do so, the presented CDP-ODLSSA technique employs Long Short Term Memory-Autoencoder (LSTM-AE) model for prediction of cell densities. In addition, the hyperparameter tuning of the LSTM-AE model takes place by the use of Salp Swarm Algorithm (SSA). For experimental validation of the CDP-ODLSSA technique, a wide range of simulations was taken place. The obtained values highlighted the superiority of the CDP-ODLSSA technique compared to other approaches.
基于Salp群算法的最优深度学习细胞密度预测设计
细胞密度预测可以定义为在给定数量的培养物或细胞悬浮液中预测细胞数量的过程。它被认为是细胞生物学中的一种常见做法,因为细胞密度对细胞行为有重大影响,可以用于监测细胞培养的健康和生长。细胞密度的精确预测对细胞生物学的一系列应用具有重要意义。,其中包括生物处理、基于细胞的测定和细胞培养。因此,本文利用最优深度学习与Salp群算法(CDP-ODLSSA)技术开发了一种新的细胞密度预测设计。提出的CDP-ODLSSA技术可以准确地预测细胞悬液或培养图像上的细胞密度。为此,提出的CDP-ODLSSA技术采用长短期记忆-自动编码器(LSTM-AE)模型来预测细胞密度。此外,利用Salp群算法(Salp Swarm Algorithm, SSA)对LSTM-AE模型进行超参数整定。为了实验验证CDP-ODLSSA技术,进行了广泛的模拟。所得值突出了CDP-ODLSSA技术与其他方法相比的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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