Ayyad Amr M, Eltanahy Eladl G, Hussien Mervat H, Refaay Dina A
Botany Department, Faculty of Science, Mansoura University, Mansoura, 35516, Egypt.
Microb Cell Fact. 2025 Jul 11;24(1):165. doi: 10.1186/s12934-025-02765-2.
Microalgae such as Chlorella sorokiniana and Monoraphidium convolutum are promising sources for biofuels, pharmaceuticals, nutraceuticals, and wastewater treatment. However, biomass harvesting remains a cost-intensive bottleneck. Conventional methods like centrifugation and flocculation pose challenges due to energy demands and contamination risks. Sedimentation offers a passive, eco-friendly alternative but is highly sensitive to environmental and physiological variables. This study integrates response surface methodology with a novel, non-invasive photographic imaging technique to optimize sedimentation efficiency.
Both species exhibited optimal growth in Bold Basal Medium, achieving cell densities of 29.59 and 9.5 million cells per mL, respectively. Automated cell counting strongly correlated with manual methods (R = 98.99%). Biochemical analysis revealed a higher protein content in C. sorokiniana (61.6%) and greater lipid content in M. convolutum (39.31%). Sedimentation efficiency was highest at acidic pH and low salinity, reaching 96.14% for C. sorokiniana and 88.7% for M. convolutum. Sealed vessels and smaller culture volumes further enhanced sedimentation efficiency. RSM predictive models achieved high accuracy (adjusted R > 99%). A novel, real-time photographic method for sedimentation assessment was introduced, offering a non-invasive, sampling-free alternative to conventional techniques. This method strongly correlated with OD-based measurements (R = 94.89%) and presents a scalable solution for continuous biomass monitoring. Compared to conventional centrifugation, the optimized sedimentation approach is estimated to reduce harvesting costs by 77-79%.
This study advances sedimentation-based harvesting of C. sorokiniana and M. convolutum by integrating RSM with a novel, automated, non-invasive imaging technique for sedimentation monitoring. This approach, rarely applied in microalgae harvesting, enables real-time assessment without disturbing the culture, enhancing process control and scalability. Sedimentation efficiency was influenced by cell morphology, biochemical composition, and environmental factors such as pH, salinity, gas exchange, and culture volume. The optimized conditions not only improved harvesting precision and reproducibility but also reduced harvesting costs, highlighting the method's potential for economic and environmentally sustainable deployment in large-scale microalgae-based production systems for biofuels, bioplastics, and high-value compounds.
诸如索氏小球藻和卷曲单歧藻等微藻是生物燃料、药物、营养保健品及废水处理的理想来源。然而,生物质收获仍然是一个成本高昂的瓶颈。像离心和絮凝等传统方法由于能源需求和污染风险而面临挑战。沉降提供了一种被动、环保的替代方法,但对环境和生理变量高度敏感。本研究将响应面方法与一种新颖的非侵入性摄影成像技术相结合,以优化沉降效率。
两种微藻在Bold基础培养基中均表现出最佳生长状态,细胞密度分别达到每毫升2959万个和950万个细胞。自动细胞计数与手动方法高度相关(R = 98.99%)。生化分析表明,索氏小球藻的蛋白质含量较高(61.6%),而卷曲单歧藻的脂质含量较高(39.31%)。在酸性pH值和低盐度条件下,沉降效率最高,索氏小球藻达到96.14%,卷曲单歧藻达到88.7%。密封容器和较小的培养体积进一步提高了沉降效率。响应面方法预测模型具有很高的准确性(调整后的R>99%)。引入了一种用于沉降评估的新颖实时摄影方法,为传统技术提供了一种非侵入性、无需采样的替代方法。该方法与基于光密度的测量高度相关(R = 94.89%),并为连续生物质监测提供了一种可扩展的解决方案。与传统离心相比,优化后的沉降方法估计可将收获成本降低77 - 79%。
本研究通过将响应面方法与一种新颖的、自动化的、非侵入性成像技术相结合,用于沉降监测,推动了基于沉降的索氏小球藻和卷曲单歧藻收获技术的发展。这种方法在微藻收获中很少应用,能够在不干扰培养的情况下进行实时评估,增强了过程控制和可扩展性。沉降效率受细胞形态、生化组成以及pH值、盐度、气体交换和培养体积等环境因素的影响。优化后的条件不仅提高了收获精度和可重复性,还降低了收获成本,突出了该方法在基于微藻的大规模生物燃料、生物塑料和高价值化合物生产系统中实现经济和环境可持续部署的潜力。