Arslan Malik Muhammad, Yang Xiaodong, Zhao Nan, Guan Lei, Cui Tao, Haider Daniyal
Key Laboratory of High Speed Circuit Design and EMC of Ministry of Education, School of Electronic EngineeringXidian University Xi'an 710071 China.
Department of Computer ScienceNottingham Trent University NG1 4FQ Nottingham U.K.
IEEE Open J Eng Med Biol. 2025 Mar 5;6:407-412. doi: 10.1109/OJEMB.2025.3548613. eCollection 2025.
Neonatal Respiratory Distress Syndrome (NRDS) poses a significant threat to newborn health, necessitating timely and accurate diagnosis. This study introduces NDL-Net, an innovative hybrid deep learning framework designed to diagnose NRDS from chest X-rays (CXR). The architecture combines MobileNetV3 Large for efficient image processing and ResNet50 for detecting complex patterns essential for NRDS identification. Additionally, a Long Short-Term Memory (LSTM) layer analyzes temporal variations in imaging data, enhancing predictive accuracy. Extensive evaluation on neonatal CXR datasets demonstrated NDL-Net's high diagnostic performance, achieving 98.09% accuracy, 97.45% precision, 98.73% sensitivity, 98.08% F1-score, and 98.73% specificity. The model's low false negative and false positive rates underscore its superior diagnostic capabilities. NDL-Net represents a significant advancement in medical diagnostics, improving neonatal care through early detection and management of NRDS.
新生儿呼吸窘迫综合征(NRDS)对新生儿健康构成重大威胁,需要及时准确的诊断。本研究介绍了NDL-Net,这是一种创新的混合深度学习框架,旨在通过胸部X光片(CXR)诊断NRDS。该架构结合了用于高效图像处理的MobileNetV3 Large和用于检测NRDS识别所需复杂模式的ResNet50。此外,长短期记忆(LSTM)层分析成像数据的时间变化,提高预测准确性。对新生儿CXR数据集的广泛评估表明,NDL-Net具有很高的诊断性能,准确率达到98.09%,精确率达到97.45%,灵敏度达到98.73%,F1分数达到98.08%,特异性达到98.73%。该模型较低的假阴性和假阳性率突出了其卓越的诊断能力。NDL-Net代表了医学诊断领域的重大进步,通过早期检测和管理NRDS改善了新生儿护理。