Sial Hassan Ahmed, Carandell Francesc, Ajanovic Sara, Jiménez Javier, Quesada Rita, Santos Fabião, Buck W Chris, Sidat Muhammad, Bassat Quique, Jobst Beatrice, Petrone Paula
Barcelona Institute for Global Health (ISGlobal), Barcelona, Spain; Roche Informatics Madrid, Madrid, Spain.
Kriba, Barcelona Science Park, Barcelona, Spain.
Ultrasound Med Biol. 2025 Jun 28. doi: 10.1016/j.ultrasmedbio.2025.04.009.
Infant meningitis can be a life-threatening disease and requires prompt and accurate diagnosis to prevent severe outcomes or death. Gold-standard diagnosis requires lumbar puncture (LP) to obtain and analyze cerebrospinal fluid (CSF). Despite being standard practice, LPs are invasive, pose risks for the patient and often yield negative results, either due to contamination with red blood cells from the puncture itself or because LPs are routinely performed to rule out a life-threatening infection, despite the disease's relatively low incidence. Furthermore, in low-income settings where incidence is the highest, LPs and CSF exams are rarely feasible, and suspected meningitis cases are generally treated empirically. There is a growing need for non-invasive, accurate diagnostic methods.
We developed a three-stage deep learning framework using Neosonics ultrasound technology for 30 infants with suspected meningitis and a permeable fontanelle at three Spanish University Hospitals (from 2021 to 2023). In stage 1, 2194 images were processed for quality control using a vessel/non-vessel model, with a focus on vessel identification and manual removal of images exhibiting artifacts such as poor coupling and clutter. This refinement process resulted in a final cohort comprising 16 patients-6 cases (336 images) and 10 controls (445 images), yielding 781 images for the second stage. The second stage involved the use of a deep learning model to classify images based on a white blood cell count threshold (set at 30 cells/mm) into control or meningitis categories. The third stage integrated explainable artificial intelligence (XAI) methods, such as Grad-CAM visualizations, alongside image statistical analysis, to provide transparency and interpretability of the model's decision-making process in our artificial intelligence-driven screening tool.
Our approach achieved 96% accuracy in quality control and 93% precision and 92% accuracy in image-level meningitis detection, with an overall patient-level accuracy of 94%. It identified 6 meningitis cases and 10 controls with 100% sensitivity and 90% specificity, demonstrating only a single misclassification. The use of gradient-weighted class activation mapping-based XAI significantly enhanced diagnostic interpretability, and to further refine our insights we incorporated a statistics-based XAI approach. By analyzing image metrics such as entropy and standard deviation, we identified texture variations in the images attributable to the presence of cells, which improved the interpretability of our diagnostic tool.
This study supports the efficacy of a multi-stage deep learning model for non-invasive screening of infant meningitis and its potential to guide the need for LPs. It also highlights the transformative potential of artificial intelligence in medical diagnostic screening for neonatal health care, paving the way for future research and innovations.
婴儿脑膜炎可能是一种危及生命的疾病,需要迅速准确的诊断以防止出现严重后果或死亡。金标准诊断需要进行腰椎穿刺(LP)以获取并分析脑脊液(CSF)。尽管LP是标准操作,但它具有侵入性,会给患者带来风险,而且常常得出阴性结果,这要么是由于穿刺本身导致红细胞污染,要么是因为尽管该疾病发病率相对较低,但LP仍被常规用于排除危及生命的感染。此外,在发病率最高的低收入地区,LP和脑脊液检查很少可行,疑似脑膜炎病例通常是经验性治疗。因此,对非侵入性、准确的诊断方法的需求日益增长。
我们利用Neosonics超声技术,为西班牙三家大学医院的30名疑似脑膜炎且囟门可透声的婴儿开发了一个三阶段深度学习框架(时间跨度为2021年至2023年)。在第一阶段,使用血管/非血管模型对2194张图像进行质量控制处理,重点是血管识别以及手动去除表现出诸如耦合不良和杂乱等伪像的图像。这个优化过程产生了一个最终队列,包括16名患者——6例病例(336张图像)和10名对照(445张图像),为第二阶段提供了781张图像。第二阶段使用深度学习模型根据白细胞计数阈值(设定为30个细胞/mm)将图像分类为对照或脑膜炎类别。第三阶段将可解释人工智能(XAI)方法(如Grad-CAM可视化)与图像统计分析相结合,以在我们的人工智能驱动的筛查工具中提供模型决策过程的透明度和可解释性。
我们的方法在质量控制方面达到了96%的准确率,在图像级脑膜炎检测方面达到了93%的精确率和92%的准确率,总体患者级准确率为94%。它以100%的灵敏度和90%的特异性识别出6例脑膜炎病例和10名对照,仅出现了一次错误分类。基于梯度加权类激活映射的XAI的使用显著增强了诊断的可解释性,为了进一步完善我们的见解,我们纳入了一种基于统计的XAI方法。通过分析诸如熵和标准差等图像指标,我们识别出了图像中由于细胞存在而导致的纹理变化,这提高了我们诊断工具的可解释性。
本研究支持了多阶段深度学习模型用于婴儿脑膜炎非侵入性筛查的有效性及其指导LP必要性的潜力。它还凸显了人工智能在新生儿医疗保健医学诊断筛查中的变革潜力,为未来的研究和创新铺平了道路。