AbdulGani Aysha F, Al Ahmad Mahmoud
Department of Electrical Engineering, College of Engineering, United Arab Emirates University, Al Ain 15551, United Arab Emirates.
Heliyon. 2021 May 12;7(5):e07027. doi: 10.1016/j.heliyon.2021.e07027. eCollection 2021 May.
Label free based methods received huge interest in the field of bio cell characterizations because they do not cause any cell damage nor contribute any change in its compositions. This work takes a close outlook of cancerous cells discrimination from normal cells utilizing parametric modeling approach. Autoregressive (AR) modeling technique is used to fit the measured optical transmittance profiles of both cancer and normal cells. The transmitted light intensity, when passes through the cells, gets affected by their intercellular compositions and membrane properties. In this study, four types of cells: lung-cancerous and normal, liver-cancerous and normal, were suspended in their corresponding medium and their transmission characteristics were collected and processed. The AR coefficients of each type of the cell were analyzed with the statistical technique called Analysis of variance (ANOVA), which provided the significant coefficients. The poles extracted from the significant coefficients resulted in an improved demarcation for normal and cancer cells. These outcomes can be further utilized for cell classification using statistical tools.
基于无标记的方法在生物细胞表征领域引起了极大的关注,因为它们不会对细胞造成任何损伤,也不会改变其成分。这项工作利用参数建模方法对癌细胞与正常细胞的区分进行了深入研究。自回归(AR)建模技术用于拟合癌细胞和正常细胞的测量光透射率曲线。当透射光强度穿过细胞时,会受到细胞间成分和膜特性的影响。在本研究中,将四种类型的细胞:肺癌细胞和正常细胞、肝癌细胞和正常细胞,悬浮在相应的培养基中,并收集和处理它们的透射特性。使用称为方差分析(ANOVA)的统计技术分析每种类型细胞的AR系数,从而得到显著系数。从显著系数中提取的极点对正常细胞和癌细胞进行了更好的区分。这些结果可进一步用于使用统计工具进行细胞分类。