[1] HUANG D M, HUANG J, QIAO K, et al. Deep learning-based lung sound analysis for intelligent stethoscope[J]. Military Medical Research, 2023, 10: 20-44.
[2] HUANG D, WANG L, WANG W. A multi-center clinical trial for wireless stethoscope-based diagnosis and prognosis of children community-acquired pneumonia[J]. IEEE Transactions on Biomedical Engineering, 2023, 70: 2215-2226.
[3] FRANCONE M, IAFRATE F, MASCI G M, et al. Chest CT score in COVID-19 patients:Correlation with disease severity and short-term prognosis[J]. European Radiology, 2020, 30: 6808-6817.
[4] The Top 10 Causes of Death[EB/OL]. World Health Organization,
[2024-03-01]. https://www.who.int/zh/news-room/fact-sheets/detail.
[5] KAMEPALLI S, RAO B S, RAO N C S. Custom-built deep convolutional neural networkfor breathing sound classification to detect respiratory diseases[C]//International Conference on Computational Intelligence and Data Engineering (ICCIDE). 2022: 189-201.
[6] KUMAR S, BHAGAT V, SAHU P, et al. A novel multimodal framework for early diagnosis and classification of COPD based on CT scan images and multivariate pulmonary respiratory diseases[J]. Computer Methods and Programs in Biomedicine, 2024, 243: 107909-107911.
[7] HUANG B, SONG Y, CUI Z, et al. Gravitational search algorithm-extreme learning machine for COVID-19 active cases forecasting[J]. IET Software, 2023, 17: 554-565.
[8] SANGLE S, GAIKWAD C. COVID-19 detection using spectral and statistical features of cough and breath sounds[C]//2021 International Conference on Decision Aid Sciences and Application (DASA). 2021: 182-186.
[9] ANDRONIKOU S, GOUSSARD P, SORANTIN E. Computed tomography in children withcommunity-acquired pneumonia[J]. Pediatric Radiology, 2017, 47: 1431-1440.
[10] HUANG D, WANG L, LU H, et al. A contrastive embedding-based domain adaptation method for lung sound recognition in children community-acquired pneumonia[C]//2023 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP). 2023: 1-5.
[11] SHUVO S B, ALI S N, SWAPNIL S I, et al. A lightweight CNN model for detecting respiratory diseases from lung auscultation sounds using EMD-CWT-based hybrid scalogram [J]. IEEE Journal of Biomedical and Health Informatics, 2021, 25: 2595-2603.
[12] KWON A M, KANG K. A temporal dependency feature in lower dimension for lung sound signal classification[J]. Scientific Reports, 2022, 12: 7877-7889.
[13] BRUNESE L, MERCALDO F, REGINELLI A, et al. A neural network-based method forrespiratory sound analysis and lung disease detection[J]. Applied Sciences, 2022, 12: 3861-3877.
[14] 4.4 million+ Stunning Free Images to Use Anywhere[EB/OL]. Pixabay,
[2024-03-01]. https://pixabay.com.
[15] SUBASINGHE A, ABEYWICKRAMA A, DISSANAYAKE H, et al. Smart stethoscope: Intelligent respiratory disease prediction system[C]//2022 2nd International Conference on Advanced Research in Computing (ICARC). 2022: 242-247.
[16] TARIQ Z, SHAH S K, LEE Y. Feature-based fusion using CNN for lung and heart sound classification[J]. Sensors, 2022, 22: 1492-1521.
[17] DROUIN E, CHAMBELLAN A, HAUTECOEUR P. Laennecs’mediate auscultation: Child’s play[J]. American Heart Journal, 2023, 255: 52-57.
[18] WEINBERG F. The history of the stethoscope[J]. Canadian Family Physician, 1993, 39: 2223-2224.
[19] GROOBY E, SITAULA C, FATTAHI D, et al. Noisy neonatal chest sound separation for high quality heart and lung sounds[J]. IEEE Journal of Biomedical and Health Informatics, 2022, 27: 2635-2646.
[20] NGUYEN T, PERNKOPF F. Lung sound classification using co-tuning and stochastic normalization[J]. IEEE Transactions on Biomedical Engineering, 2022, 69: 2872-2882.
[21] TRIPATHY R K, DASH S, RATH A, et al. Automated detection of pulmonary diseases from lung sound signals using fixed-boundary-based empirical wavelet transform[J]. IEEE Sensors Letters, 2022, 6: 1-4.
[22] DATTA S, DUTTA CHOUDHURY A, DESHPANDE P, et al. Automated lung sound analysis for detecting pulmonary abnormalities[C]//2017 39th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC). 2017: 4594-4598.
[23] FERNANDO T, SRIDHARAN S, DENMAN S, et al. Robust and interpretable temporal convolution network for event detection in lung sound recordings[J]. IEEE Journal of Biomedical and Health Informatics, 2022, 26: 2898-2908.
[24] ZHAO Z, GONG Z, NIU M, et al. Automatic respiratory sound classification via multi-branch temporal convolutional network[C]//2022 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP). 2022: 9102-9106.
[25] YU S, DING Y, QIAN K, et al. A glance-and-gaze network for respiratory sound classification[C]//2022 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP). 2022: 9007-9011.
[26] PETMEZAS G, CHEIMARIOTIS G A, STEFANOPOULOS L, et al. Automated lung sound classification using a hybrid CNN-LSTM network and focal loss function[J]. Sensors, 2022, 22: 1218-1232.
[27] SONG W, HAN J, SONG H. Contrastive embeddind learning method for respiratory sound classification[C]//2021 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP). 2021: 1275-1279.
[28] HUANG H, YANG D, YANG X, et al. Portable multifunctional electronic stethoscope[C]//2019 IEEE 3rd Information Technology, Networking, Electronic and Automation Control Conference (ITNEC). 2019: 691-694.
[29] KLUM M, LEIB F, OBERSCHELP C, et al. Wearable multimodal stethoscope patch for wireless biosignal acquisition and long-term auscultation[C]//2019 41st Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC). 2019: 5781-5785.
[30] MALWADE J, SAYYED S, NASIR J, et al. Wireless stethoscope with bluetooth technology [C]//2020 International Conference on Computational Performance Evaluation (ComPE). 2020: 168-172.
[31] JOSHI S S, PATIL M R, KANAWADE N P, et al. Bluetooth-based wireless digital stethoscope [C]//2021 International Conference on Emerging Smart Computing and Informatics (ESCI). 2021: 197-202.
[32] SZOT S, LEVIN A, RAGAZZI A, et al. A wireless digital stethoscope design[C]//2018 14th IEEE International Conference on Signal Processing (ICSP). 2018: 74-78.
[33] JOSHITHA C, KANAKARAJA P, ROOBAN S, et al. Design and implementation of Wi-Fi enabled contactless electronic stethoscope[C]//2022 International Conference on Sustainable Computing and Data Communication Systems (ICSCDS). 2022: 932-936.
[34] RAMESHA M, DANKANGOWDA V, JEEVAN K, et al. Implementation of IoT based wireless electronic stethoscope[C]//2020 Third International Conference on Multimedia Processing, Communication & Information Technology (MPCIT). 2020: 103-106.
[35] HARSHITHA R, PARAMESHACHARI B, YATHIRAJ G, et al. A deep learning model using VGG-16 and neural networks to identify pneumonia from chest X-ray images[C]//2024 International Conference on Integrated Circuits and Communication Systems (ICICACS). 2024: 1-6.
[36] RAO D R, PATHAKAMUDI B, DAKSHAYANI R. An approach to avoid SSS problem in the data space using Fisher Face (PCA+ LDA) technique: A case study on chest X-ray pneumonia data[C]//2024 IEEE International Students’ Conference on Electrical, Electronics and Computer Science (SCEECS). 2024: 1-6.
[37] AMRULLOH Y A, MAULIDIN L M. Spectral analysis of abnormal breath sounds in childhood pneumonia[C]//2018 International Symposium on Electronics and Smart Devices (ISESD). 2018: 1-5.
[38] SOLÀ J, BRAUN F, MUNTANÉ E, et al. Towards an unsupervised device for the diagnosis of childhood pneumonia in low resource settings: Automatic segmentation of respiratory sounds[C]//2016 38th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC). 2016: 283-286.
[39] AMOSE J, MANIMEGALAI P, NARMATHA C, et al. Comparative performance analysis of kernel functions in support vector machines in the diagnosis of pneumonia using lung sounds [C]//2022 2nd International Conference on Computing and Information Technology (ICCIT). 2022: 320-324.
[40] FRAIWAN M, FRAIWAN L, KHASSAWNEH B, et al. A dataset of lung sounds recorded from the chest wall using an electronic stethoscope[J]. Data in Brief, 2021, 35: 106899-106913.
[41] GROOBY E, HE J, FATTAHI D, et al. A new non-negative matrix co-factorisation approach for noisy neonatal chest sound separation[C]//2021 43rd Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC). 2021: 5668-5673.
[42] SINGH D, SINGH B K, BEHERA A K. Comparative analysis of lung sound denoising technique[C]//2020 First International Conference on Power, Control and Computing Technologies (ICPC2T). 2020: 406-410.
[43] CHO K, VAN MERRIENBOER B, GULCEHRE C, et al. Learning phrase representations using RNN encoder-decoder for statistical machine translation[J]. Computer Science, 2014:1062-1078.
[44] HARVILL J, WANI Y, ALAM M, et al. Estimation of respiratory rate from breathing audio[C]//2022 44th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC). 2022: 4599-4603.
[45] ZHANG Q, FRANCISCO C, KABIR M, et al. Noise removal of tracheal sound recorded during CPET to determine respiratory rate[C]//2019 41st Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC). 2019: 4650-4653.
[46] LIN I, SER W, ZHANG J, et al. A signal-noise separation algorithm for the estimation of respiratory rate from breath sound[C]//2011 8th International Conference on Information, Communications and Signal Processing (ICICS). 2011: 1-4.
[47] HSIAO C H, LIN T W, LIN C W, et al. Breathing sound segmentation and detection using transfer learning techniques on an attention-based encoder-decoder architecture[C]//2020 42nd Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC). 2020: 754-759.
[48] JÁCOME C, RAVN J, HOLSBØ E, et al. Convolutional neural network for breathing phase detection in lung sounds[J]. Sensors, 2019, 19: 1789-1798.
[49] MCLANE I, LAUWERS E, STAS T, et al. Comprehensive analysis system for automated respiratory cycle segmentation and crackle peak detection[J]. IEEE Journal of Biomedical and Health Informatics, 2022, 26: 1847-1860.
[50] PAN F, YE T, SUN P, et al. Time course of lung changes at chest CT during recovery from coronavirus disease 2019 (COVID-19)[J]. Radiology, 2020, 295: 715-721.
[51] PRAMONO R X A, BOWYER S, RODRIGUEZ-VILLEGAS E. Automatic adventitious respiratory sound analysis: A systematic review[J]. PloS One, 2017, 12: 177881-177926.
[52] NGUYEN T, PERNKOPF F. Lung sound classification using snapshot ensemble of convolutional neural networks[C]//2020 42nd Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC). 2020: 760-763.
[53] İÇER S, GENGEÇ Ş. Classification and analysis of non-stationary characteristics of crackle and rhonchus lung adventitious sounds[J]. Digital Signal Processing, 2014, 28: 18-27.
[54] ROCHA B M, PESSOA D, MARQUES A, et al. Automatic classification of adventitious respiratory sounds: A (un) solved problem?[J]. Sensors, 2020, 21: 37-57.
[55] SHARMA G, UMAPATHY K, KRISHNAN S. Trends in audio signal feature extraction methods[J]. Applied Acoustics, 2020, 158: 107020-107040.
[56] BROWN C, CHAUHAN J, GRAMMENOS A, et al. Exploring automatic diagnosis of COVID-19 from crowdsourced respiratory sound data[C]//Proceedings of the 26th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining (KDD). 2020: 3474-3484.
[57] XU L, CHENG J, LIU J, et al. Arsc-net: Adventitious respiratory sound classification network using parallel paths with channel-spatial attention[C]//2021 IEEE International Conference on Bioinformatics and Biomedicine (BIBM). 2021: 1125-1130.
[58] GAIROLA S, TOM F, KWATRA N, et al. Respirenet: A deep neural network for accurately detecting abnormal lung sounds in limited data setting[C]//2021 43rd Annual International Con ference of the IEEE Engineering in Medicine and Biology Society (EMBC). 2021: 527-530.
[59] ROCHA B M, FILOS D, MENDES L, et al. An open access database for the evaluation of respiratory sound classification algorithms[J]. Physiological Measurement, 2019, 40: 035001-035031.
[60] SHI L, ZHANG J, YANG B, et al. Lung sound recognition method based on multi-resolution interleaved net and time-frequency feature enhancement[J]. IEEE Journal of Biomedical and Health Informatics, 2023, 27: 4768-4779.
[61] LIN T Y, GOYAL P, GIRSHICK R, et al. Focal loss for dense object detection[C]//Proceedings of the IEEE International Conference on Computer Vision (ICCV). 2017: 2980-2988.
[62] DOSOVITSKIY A, BEYER L, KOLESNIKOV A, et al. An image is worth 16x16 words:Transformers for image recognition at scale[C]//International Conference on Learning Repre sentations (ICLR). 2021: 11929-11952.
[63] GONG Y, CHUNG Y A, GLASS J. Ast: Audio spectrogram transformer[C]//2021 Annual Conference of the International Speech Communication Association (Interspeech). 2021: 692-698.
[64] REHMER A, KROLL A. On the vanishing and exploding gradient problem in gated recurrent units[J]. IFAC-PapersOnLine, 2020, 53: 1243-1248.
[65] VASWANI A, SHAZEER N, PARMAR N, et al. Attention is all you need[J]. Advances inNeural Information Processing Systems, 2017, 30: 03750-03762.
[66] WU C, HUANG D, TAO X, et al. Intelligent stethoscope using full self-attention mechanism for abnormal respiratory sound recognition[C]//2023 IEEE EMBS International Conference on Biomedical and Health Informatics (BHI). 2023: 1-4.
[67] CHEN Z, WANG H, YEH C H, et al. Classify respiratory abnormality in lung sounds using STFT and a fine-tuned ResNet18 network[C]//2022 IEEE Biomedical Circuits and Systems Conference (BioCAS). 2022: 233-237.
[68] SIMONYAN K, ZISSERMAN A. Very deep convolutional networks for large-scale image recognition[C]//International Conference on Learning Representations (ICLR). 2015: 1556-1570.
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