Machine-Learning-Assisted Blood Parameter Sensing Platform for Rapid Next Generation Biomedical and Healthcare Applications

Sangeeta D. Palekar, J. Kalambe, R. Patrikar
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Abstract

The pursuit of rapid diagnosis has resulted in considerable advances in blood parameter sensing technologies. As technology advances, there may be challenges in equitable access for all individuals due to economic constraints, advanced expertise, limited accessibility in particular places, or insufficient infrastructure. Here, a simple, cost-efficient, benchtop biochemical blood-sensing platform was developed for detecting crucial blood parameters for multiple disease diagnosis. Colorimetric and image processing techniques were used to evaluate color intensity. A CMOS image sensor was utilized to capture images to calculate optical density for sensing. The platform was assessed with blood serum samples, including Albumin, Gamma Glutamyl Transferase, Alpha Amylase, Alkaline Phosphatase, Bilirubin, and Total Protein within clinically relevant limits. The platform had excellent limits of detection for these parameters, which are critical for diagnosing liver and kidney-related diseases (0.27g/dL, 0.86IU/L, 1.24IU/L, 0.97IU/L, 0.24mg/dL, 0.35g/dL, respectively). Machine learning algorithms were used to estimate targeted blood parameter concentrations from optical density readings, with 98.48% accuracy and reduced incubation time by nearly 80%. The proposed platform was compared to commercial analyzers, which demonstrate excellent accuracy and reproducibility with remarkable precision (0.03 to 0.71%CV). The platform's robust stability of 99.84% was shown via stability analysis, indicating its practical applicability.
用于下一代生物医学和医疗保健快速应用的机器学习辅助血液参数传感平台
为了实现快速诊断,血液参数传感技术取得了长足的进步。随着技术的发展,由于经济条件限制、专业技术水平不高、特定地区的可及性有限或基础设施不足等原因,可能会给所有人公平获取技术带来挑战。在此,我们开发了一种简单、经济高效的台式血液生化传感平台,用于检测多种疾病诊断的关键血液参数。使用比色法和图像处理技术来评估颜色强度。利用 CMOS 图像传感器捕捉图像,计算传感的光密度。该平台使用血清样本进行了评估,包括白蛋白、γ 谷氨酰转移酶、α 淀粉酶、碱性磷酸酶、胆红素和总蛋白,均在临床相关范围内。该平台对这些对诊断肝脏和肾脏相关疾病至关重要的参数(分别为 0.27g/dL、0.86IU/L、1.24IU/L、0.97IU/L、0.24mg/dL、0.35g/dL)具有出色的检测限。利用机器学习算法从光密度读数估算目标血液参数浓度,准确率达 98.48%,孵育时间缩短了近 80%。将所提出的平台与商业分析仪进行了比较,结果表明,商业分析仪具有极佳的准确性和可重复性,且精确度极高(0.03% 至 0.71%CV)。稳定性分析表明,该平台的稳定性高达 99.84%,表明其具有实用性。
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