Department of Clinical and Experimental Medicine, University of Foggia, Foggia, Italy.
Department of Medical, Surgical and Health Sciences, University of Trieste, Trieste, Italy.
Clin Oral Implants Res. 2024 Jul;35(7):729-738. doi: 10.1111/clr.14271. Epub 2024 Apr 17.
The present study was conducted to evaluate the reproducibility of Lekholm and Zarb classification system (L&Z) for bone quality assessment of edentulous alveolar ridges and to investigate the potential of a data-driven approach for bone quality classification.
Twenty-six expert clinicians were asked to classify 110 CBCT cross-sections according to L&Z classification (T0). The same evaluation was repeated after one month with the images put in a different order (T1). Intra- and inter-examiner agreement analyses were performed using Cohen's kappa coefficient (CK) and Fleiss' kappa coefficient (FK), respectively. Additionally, radiomic features extraction was performed from 3D edentulous ridge blocks derived from the same 110 CBCTs, and unsupervised clustering using 3 different clustering methods was used to identify patterns in the obtained data.
Intra-examiner agreement between T0 and T1 was weak (CK 0.515). Inter-examiner agreement at both time points was minimal (FK at T0: 0.273; FK at T1: 0.243). The three different unsupervised clustering methods based on radiomic features aggregated the 110 CBCTs in three groups in the same way.
The results showed low agreement among clinicians when using L&Z classification, indicating that the system may not be as reliable as previously thought. The present study suggests the possible application of a reproducible data-driven approach based on radiomics for the classification of edentulous alveolar ridges, with potential implications for improving clinical outcomes. Further research is needed to determine the clinical significance of these findings and to develop more standardized and accurate methods for assessing bone quality of edentulous alveolar ridges.
本研究旨在评估 Lekholm 和 Zarb 分类系统(L&Z)用于评估无牙牙槽嵴骨质量的可重复性,并研究数据驱动方法在骨质量分类中的潜力。
26 名专家临床医生被要求根据 L&Z 分类(T0)对 110 个 CBCT 横断面进行分类。一个月后,以不同的顺序放置图像(T1),重复相同的评估。使用 Cohen's kappa 系数(CK)和 Fleiss' kappa 系数(FK)分别进行内部和外部检查者之间的一致性分析。此外,从相同的 110 个 CBCT 中提取 3D 无牙牙槽嵴块的放射组学特征,并使用 3 种不同的聚类方法进行无监督聚类,以识别数据中获得的模式。
T0 和 T1 之间的内部检查者一致性较弱(CK 0.515)。两个时间点的外部检查者之间的一致性最小(T0 时的 FK:0.273;T1 时的 FK:0.243)。基于放射组学特征的三种不同无监督聚类方法以相同的方式将 110 个 CBCT 聚集在三组中。
当使用 L&Z 分类时,临床医生之间的一致性较低,表明该系统可能不如先前认为的那样可靠。本研究表明,基于放射组学的可重复数据驱动方法在无牙牙槽嵴分类中的应用具有潜在的应用前景,可能对改善临床结果具有重要意义。需要进一步研究以确定这些发现的临床意义,并开发更标准化和准确的方法来评估无牙牙槽嵴的骨质量。