Khani Masoud, Luo Jake, Assadi Shalmani Mohammad, Taleban Amirsajjad, Adams Jazzmyne, Friedland David R
Health Informatics Program, Zilber School of Public Health, University of Wisconsin-Milwaukee, Milwaukee, WI USA.
Department of Health Informatics and Administration, College of Health Sciences, University of Wisconsin, 2025 E Newport Ave 6565, Milwaukee, WI 53211 USA.
Health Inf Sci Syst. 2024 Nov 24;13(1):1. doi: 10.1007/s13755-024-00317-3. eCollection 2025 Dec.
Benign Paroxysmal Positional Vertigo (BPPV) is a common vestibular disorder significantly impacting older adults, characterized by brief episodes of vertigo triggered by head movements. Accurate and timely diagnosis of BPPV can be challenging due to its overlapping symptoms with other conditions. Machine learning (ML) offers a promising approach to enhance diagnostic accuracy and efficiency.
The primary purpose of this study was to evaluate the efficacy of various ML models in predicting BPPV. This common vestibular disorder significantly impacts older adults. This research sought to build models that could accurately predict BPPV using readily available clinical data and to assess the application of Explainable Artificial Intelligence (XAI) to enhance transparency and trust in ML-driven diagnoses.
In this study, we trained and evaluated several ML models on a rich dataset from Froedtert Hospital involving 7,760 patients characterized by a diverse range of demographic and clinical features. This robust dataset enabled a detailed exploration of the factors influencing BPPV. By employing explainable AI techniques, we aimed to enhance the predictive accuracy of our models and provide clinicians with transparent and interpretable insights into diagnostic reasoning, bridging the gap between machine learning efficacy and clinical usability.
Gradient Boosting emerged as the most effective model, exhibiting the highest accuracy (85.422%), F1 (0.851), and AUC (0.911). Statistical analysis revealed significant demographic disparities in BPPV occurrence. Specifically, the odds ratio (OR) for BPPV among "White or Caucasian" individuals was 2.433 (p < 0.001), indicating a higher prevalence compared to other races. Conversely, "Black or African American" individuals had an OR of 0.851 (p < 0.05), and "Asian" individuals had an OR of 0.791 (p = 0.26). The study also found an OR of 4.498 (p < 0.001) for "Not Hispanic or Latino" individuals, suggesting a significantly higher prevalence of BPPV in this group. The application of XAI facilitated a deeper understanding and trust in model decisions, particularly highlighting how model predictions align with clinical indicators.
The study confirms that machine learning, complemented by Explainable AI, can effectively predict BPPV with high accuracy and interpretability. Leveraging XAI enhances the usability and acceptance of ML predictions in clinical settings, enabling healthcare providers to integrate these insights into their diagnostic processes. Future work should focus on further integrating these models into clinical practice to facilitate early and accurate BPPV diagnosis.
The online version contains supplementary material available at 10.1007/s13755-024-00317-3.
良性阵发性位置性眩晕(BPPV)是一种常见的前庭疾病,对老年人有显著影响,其特征是头部运动引发短暂的眩晕发作。由于其症状与其他病症重叠,准确及时诊断BPPV具有挑战性。机器学习(ML)为提高诊断准确性和效率提供了一种有前景的方法。
本研究的主要目的是评估各种ML模型在预测BPPV方面的疗效。这种常见的前庭疾病对老年人有显著影响。本研究旨在建立能够使用现成临床数据准确预测BPPV的模型,并评估可解释人工智能(XAI)的应用,以提高对ML驱动诊断的透明度和信任度。
在本研究中,我们在来自弗罗伊德特医院的一个丰富数据集上训练和评估了几个ML模型,该数据集包含7760名患者,具有广泛的人口统计学和临床特征。这个强大的数据集有助于详细探索影响BPPV的因素。通过采用可解释的人工智能技术,我们旨在提高模型的预测准确性,并为临床医生提供关于诊断推理的透明且可解释的见解,弥合机器学习疗效与临床实用性之间的差距。
梯度提升成为最有效的模型,准确率最高(85.422%),F1值为0.851,AUC为0.9