Prediction of medical codes from clinical notes is a practical and essential need for every healthcare delivery organization within current medical systems. Automating annotation will save significant time and excessive effort that human coders spend today. However, the biggest challenge is directly identifying appropriate medical codes from several thousands of high-dimensional codes from unstructured free-text clinical notes. This complex medical codes prediction problem from clinical notes has received substantial interest in the NLP community, and several recent studies have shown the state-of-the-art code prediction results of full-fledged deep learning-based methods. This progress raises the fundamental question of how far automated machine learning systems are from human coders' working performance, as well as the important question of how well current explainability methods apply to advanced neural network models such as transformers. This is to predict correct codes and present references in clinical notes that support code prediction, as this level of explainability and accuracy of the prediction outcomes is critical to gaining trust from professional medical coders.
翻译:从临床记录中预测医学编码是目前医疗系统内每个提供保健的组织的实际和必不可少的需要。自动注解将节省大量时间和人类编码员今天花费的过度努力。然而,最大的挑战是直接从没有结构的免费文本临床记录中从数千个高维代码中确定适当的医学编码。临床记录中的复杂医学编码预测问题在国家实验室社区引起了极大的兴趣,最近的一些研究表明了全方位深层学习方法的最新最新代码预测结果。这一进展提出了自动化机器学习系统与人类编码员工作表现之间的距离这一根本问题,以及当前解释方法如何适用于诸如变异器等先进的神经网络模型这一重要问题。这是预测正确的代码并在临床记录中提供参考资料,支持代码预测,因为预测结果的这种可解释性和准确性水平对于获得专业医疗编码员的信任至关重要。