Bernecker Luca, Johnsen Liv-Hege, Vangberg Torgil Riise
Department of Clinical Medicine, UiT-The Arctic University of Norway, Tromsø, Norway.
PET Imaging Center, University Hospital of North Norway, Tromsø, Norway.
BMC Med Inform Decis Mak. 2025 Feb 20;25(1):95. doi: 10.1186/s12911-025-02896-x.
Intracranial atherosclerotic stenosis (ICAS) refers to a narrowing of intracranial arteries due to plaque buildup on the inside of the vessel walls restricting blood flow. Early detection of ICAS is crucial to prevent serious consequences such as stroke. Here we apply three different machine learning methods, such as support vector machines, multi-layer perceptrons and Kolmogorov-Arnold Networks to predict ICAS according to sparse risk factors from blood lipids and demographic data, including smoking habits, age, sex, diabetes, blood pressure lowering and cholesterol-lowering drugs and high-density lipoprotein. We achieved similar performance on classification compared to modern detection algorithms for ICAS in TOF-MRA (time-of-flight magnetic resonance angiography). The prevalence of ICAS in the population is relatively low, which is often case in medicine. While in the medical research community, the issue of low prevalence is established, machine learning-based research in medicine often does not take into account a critical viewpoint of the prevalence in clinical settings of their methods. We showed that with a balanced training/test set an accuracy up to 81% was achievable, while with the inclusion of prevalence, the positive predictive value was at 19% to the prevalence data, changes the performance metrics. Therefore, we highlighted the discrepancy that can arise between the results reported by the models and their clinical relevance. Furthermore, the results demonstrate the predictive potential of limited risk factors, highlighting its potential contribution to a multi-modular classification algorithm based on MRAs.
颅内动脉粥样硬化性狭窄(ICAS)是指由于血管壁内侧斑块堆积导致颅内动脉变窄,从而限制血流。早期发现ICAS对于预防中风等严重后果至关重要。在此,我们应用三种不同的机器学习方法,如支持向量机、多层感知器和柯尔莫哥洛夫 - 阿诺德网络,根据血脂和人口统计学数据中的稀疏风险因素(包括吸烟习惯、年龄、性别、糖尿病、降压药和降脂药以及高密度脂蛋白)来预测ICAS。与TOF - MRA(时间飞跃磁共振血管造影)中ICAS的现代检测算法相比,我们在分类方面取得了相似的性能。ICAS在人群中的患病率相对较低,这在医学领域较为常见。虽然在医学研究界,低患病率问题已得到确认,但基于机器学习的医学研究往往没有考虑到其方法在临床环境中患病率的关键观点。我们表明,使用平衡的训练/测试集,准确率可达81%,而纳入患病率后,阳性预测值相对于患病率数据为19%,这改变了性能指标。因此,我们强调了模型报告的结果与其临床相关性之间可能出现的差异。此外,结果证明了有限风险因素的预测潜力,突出了其对基于MRA的多模块分类算法的潜在贡献。