Obtaining high-quality heart and lung sounds enables clinicians to accurately assess a newborn's cardio-respiratory health and provide timely care. However, noisy chest sound recordings are common, hindering timely and accurate assessment. A new Non-negative Matrix Co-Factorisation-based approach is proposed to separate noisy chest sound recordings into heart, lung, and noise components to address this problem. This method is achieved through training with 20 high-quality heart and lung sounds, in parallel with separating the sounds of the noisy recording. The method was tested on 68 10-second noisy recordings containing both heart and lung sounds and compared to the current state of the art Non-negative Matrix Factorisation methods. Results show significant improvements in heart and lung sound quality scores respectively, and improved accuracy of 3.6bpm and 1.2bpm in heart and breathing rate estimation respectively, when compared to existing methods.
翻译:获得高质量的心脏和肺声能使临床医生能够准确评估新生儿的心肺呼吸健康并提供及时护理;然而,噪音胸声记录很常见,妨碍及时和准确的评估;建议采用新的非负矩阵共同因素法,将噪音胸声录音分解到心脏、肺和噪音部分,以解决这一问题;这一方法是通过培训20个高质量的心脏和肺声,同时分离噪音录音的声音来实现的;该方法在68至10秒的噪音录音中进行了测试,这些录音包含心脏和肺声,并与现代非负矩阵计算法的当前状况相比较,结果显示心脏和肺声质量得分有显著改善,与现有方法相比,心脏和肺和呼吸速率估计的准确度分别提高了3.6bpm和1.2bm。