Frigieri Gustavo, Brasil Sérgio, Cardim Danilo, Czosnyka Marek, Ferreira Matheus, Paiva Wellingson S, Hu Xiao
brain4care, Johns Creek, GA, USA.
Division of Neurosurgery, Department of Neurology, School of Medicine University of São Paulo, Sao Paulo, Brazil.
NPJ Digit Med. 2025 Jan 26;8(1):57. doi: 10.1038/s41746-025-01463-y.
Noninvasive methods for intracranial pressure (ICP) monitoring have emerged, but none has successfully replaced invasive techniques. This observational study developed and tested a machine learning (ML) model to estimate ICP using waveforms from a cranial extensometer device (brain4care [B4C] System). The model explored multiple waveform parameters to optimize mean ICP estimation. Data from 112 neurocritical patients with acute brain injuries were used, with 92 patients randomly assigned to training and testing, and 20 reserved for independent validation. The ML model achieved a mean absolute error of 3.00 mmHg, with a 95% confidence interval within ±7.5 mmHg. Approximately 72% of estimates from the validation sample were within 0-4 mmHg of invasive ICP values. This proof-of-concept study demonstrates that noninvasive ICP estimation via the B4C System and ML is feasible. Prospective studies are needed to validate the model's clinical utility across diverse settings.
颅内压(ICP)监测的非侵入性方法已经出现,但没有一种成功取代侵入性技术。这项观察性研究开发并测试了一种机器学习(ML)模型,以使用来自颅骨伸展计设备(brain4care [B4C] 系统)的波形来估计颅内压。该模型探索了多个波形参数以优化平均颅内压估计。使用了112例急性脑损伤神经重症患者的数据,其中92例患者被随机分配用于训练和测试,20例留作独立验证。ML模型的平均绝对误差为3.00 mmHg,95%置信区间在±7.5 mmHg内。验证样本中约72%的估计值在侵入性颅内压值的0-4 mmHg范围内。这项概念验证研究表明,通过B4C系统和ML进行非侵入性颅内压估计是可行的。需要进行前瞻性研究以验证该模型在不同环境中的临床效用。