Artificial neural network (ANN) ability to learn, correct errors, and transform a large amount of raw data into useful medical decisions for treatment and care have increased its popularity for enhanced patient safety and quality of care. Therefore, this paper reviews the critical role of ANNs in providing valuable insights for patients' healthcare decisions and efficient disease diagnosis. We thoroughly review different types of ANNs presented in the existing literature that advanced ANNs adaptation for complex applications. Moreover, we also investigate ANN's advances for various disease diagnoses and treatments such as viral, skin, cancer, and COVID-19. Furthermore, we propose a novel deep Convolutional Neural Network (CNN) model called ConXNet for improving the detection accuracy of COVID-19 disease. ConXNet is trained and tested using different datasets, and it achieves more than 97% detection accuracy and precision, which is significantly better than existing models. Finally, we highlight future research directions and challenges such as complexity of the algorithms, insufficient available data, privacy and security, and integration of biosensing with ANNs. These research directions require considerable attention for improving the scope of ANNs for medical diagnostic and treatment applications.
翻译:人工神经网络(ANN)的学习、纠正错误和将大量原始数据转化为有用的治疗和护理医疗决定的能力,提高了它对加强病人安全和护理质量的欢迎度,因此,本文件回顾了ANN在为病人的保健决定和高效疾病诊断提供宝贵见解方面的关键作用。我们彻底审查了现有文献中介绍的不同类型的ANN,这些文献推动了对ANN的复杂应用的适应。此外,我们还调查了ANN在诸如病毒、皮肤、癌症和COVID-19等各种疾病诊断和治疗方面取得的进步。此外,我们提议建立一个名为ConXNet的新型深层神经网络模型,用于提高COVID-19疾病的检测准确性。ConXNet是利用不同的数据集进行培训和测试的。ConXNet实现了超过97%的检测准确性和精确性,这比现有的模型要好得多。最后,我们强调未来的研究方向和挑战,如算法的复杂性、现有数据不足、隐私和安全性以及生物感测与ANN。这些研究方向需要相当重视改进ANS的诊断和医疗应用范围。