We suggest a low cost, non invasive healthcare system that measures haemoglobin levels in patients and can be used as a preliminary diagnostic test for anaemia. A combination of image processing, machine learning and deep learning techniques are employed to develop predictive models to measure haemoglobin levels. This is achieved through the color analysis of the fingernail beds, palpebral conjunctiva and tongue of the patients. This predictive model is then encapsulated in a healthcare application. This application expedites data collection and facilitates active learning of the model. It also incorporates personalized calibration of the model for each patient, assisting in the continual monitoring of the haemoglobin levels of the patient. Upon validating this framework using data, it can serve as a highly accurate preliminary diagnostic test for anaemia.
翻译:我们建议建立一个低成本、非侵入式保健体系,测量病人血红蛋白的水平,并可作为贫血症的初步诊断测试;利用图像处理、机器学习和深层学习技术的结合,开发测量血红蛋白水平的预测模型;通过对指甲床的颜色分析、病人的淋巴结和舌头,实现这一点;然后将这一预测模型包在医疗应用中;这一应用加快了数据收集,便利了对模型的积极学习;还结合了每个病人的个性化模型校准,协助对病人血红蛋白水平进行持续监测;在利用数据验证这一框架之后,它可以作为贫血症的高度准确的初步诊断测试。