Department of Health, Blekinge Institute of Technology, Karlskrona, Sweden.
Department of Pediatric Radiology, Karolinska University Hospital, Stockholm, Sweden.
PLoS One. 2019 Jul 25;14(7):e0220242. doi: 10.1371/journal.pone.0220242. eCollection 2019.
The assessment of bone age and skeletal maturity and its comparison to chronological age is an important task in the medical environment for the diagnosis of pediatric endocrinology, orthodontics and orthopedic disorders, and legal environment in what concerns if an individual is a minor or not when there is a lack of documents. Being a time-consuming activity that can be prone to inter- and intra-rater variability, the use of methods which can automate it, like Machine Learning techniques, is of value.
The goal of this paper is to present the state of the art evidence, trends and gaps in the research related to bone age assessment studies that make use of Machine Learning techniques.
A systematic literature review was carried out, starting with the writing of the protocol, followed by searches on three databases: Pubmed, Scopus and Web of Science to identify the relevant evidence related to bone age assessment using Machine Learning techniques. One round of backward snowballing was performed to find additional studies. A quality assessment was performed on the selected studies to check for bias and low quality studies, which were removed. Data was extracted from the included studies to build summary tables. Lastly, a meta-analysis was performed on the performances of the selected studies.
26 studies constituted the final set of included studies. Most of them proposed automatic systems for bone age assessment and investigated methods for bone age assessment based on hand and wrist radiographs. The samples used in the studies were mostly comprehensive or bordered the age of 18, and the data origin was in most of cases from United States and West Europe. Few studies explored ethnic differences.
There is a clear focus of the research on bone age assessment methods based on radiographs whilst other types of medical imaging without radiation exposure (e.g. magnetic resonance imaging) are not much explored in the literature. Also, socioeconomic and other aspects that could influence in bone age were not addressed in the literature. Finally, studies that make use of more than one region of interest for bone age assessment are scarce.
评估骨龄和骨骼成熟度,并将其与实际年龄进行比较,是医学环境中儿科内分泌学、正畸学和矫形学诊断以及法律环境中(当缺乏文件时,确定个体是否为未成年人)的一项重要任务。由于这是一项耗时的活动,容易受到评估者之间和评估者内部的差异影响,因此使用可以实现自动化的方法,如机器学习技术,是有价值的。
本文旨在介绍使用机器学习技术进行骨龄评估研究的最新证据、趋势和研究空白。
进行了系统的文献综述,从撰写方案开始,然后在 Pubmed、Scopus 和 Web of Science 这三个数据库上进行搜索,以确定与使用机器学习技术进行骨龄评估相关的相关证据。进行了一轮回溯滚雪球搜索,以找到其他研究。对选定的研究进行质量评估,以检查偏倚和低质量的研究,并将其删除。从纳入的研究中提取数据,以构建汇总表。最后,对选定研究的表现进行了荟萃分析。
26 项研究构成了最终纳入的研究集。其中大多数研究提出了用于骨龄评估的自动系统,并研究了基于手和腕部 X 光片的骨龄评估方法。研究中使用的样本大多是综合性的,或者接近 18 岁的年龄,并且数据来源大多来自美国和西欧。少数研究探索了种族差异。
研究明显集中在基于 X 光片的骨龄评估方法上,而文献中对其他类型的无辐射医学成像(例如磁共振成像)的研究较少。此外,文献中没有涉及可能影响骨龄的社会经济和其他方面。最后,利用多个感兴趣区域进行骨龄评估的研究很少。