Three-dimensional medical imaging enables detailed understanding of osteoarthritis structural status. However, there remains a vast need for automatic, thus, reader-independent measures that provide reliable assessment of subject-specific clinical outcomes. To this end, we derive a consistent generalization of the recently proposed B-score to Riemannian shape spaces. We further present an algorithmic treatment yielding simple, yet efficient computations allowing for analysis of large shape populations with several thousand samples. Our intrinsic formulation exhibits improved discrimination ability over its Euclidean counterpart, which we demonstrate for predictive validity on assessing risks of total knee replacement. This result highlights the potential of the geodesic B-score to enable improved personalized assessment and stratification for interventions.
翻译:三维医学成像使人们能够详细了解骨髓炎的结构状况,然而,仍然非常需要自动、独立地采取措施,对具体临床结果进行可靠的评估。为此,我们不断对最近提议的Riemannian形状空间的B点进行概括化分析。我们进一步提出一种算法处理方法,进行简单而有效的计算,以便分析具有数千个样本的大型形状人口。我们的内在构型表明,对欧洲骨髓炎的对应方的歧视能力有所提高,我们证明,在评估膝盖完全替换的风险时,这种能力具有预测效力。这一结果凸显了大地测量B点对于改进个人化评估和干预分层的潜力。