Roy Shotabdi, Santosh K C
Applied AI Research Lab., Department of Computer Science, The University of South Dakota, Vermillion, SD 57069, USA.
Healthcare (Basel). 2023 Jan 19;11(3):308. doi: 10.3390/healthcare11030308.
The presence of non-biomedical foreign objects (NBFO), such as coins, buttons and jewelry, and biomedical foreign objects (BFO), such as medical tubes and devices in chest X-rays (CXRs), make accurate interpretation difficult, as they do not indicate known biological abnormalities like excess fluids, tuberculosis (TB) or cysts. Such foreign objects need to be detected, localized, categorized as either NBFO or BFO, and removed from CXR or highlighted in CXR for effective abnormality analysis. Very specifically, NBFOs can adversely impact the process, as typical machine learning algorithms would consider these objects to be biological abnormalities producing false-positive cases. It holds true for BFOs in CXRs. This paper examines detailed discussions on numerous clinical reports in addition to computer-aided detection (CADe) with diagnosis (CADx) tools, where both shallow learning and deep learning algorithms are applied. Our discussion reflects the importance of accurately detecting, isolating, classifying, and either removing or highlighting NBFOs and BFOs in CXRs by taking 29 peer-reviewed research reports and articles into account.
胸部X光片(CXR)中存在非生物医学异物(NBFO),如硬币、纽扣和珠宝,以及生物医学异物(BFO),如医疗管和器械,这使得准确解读变得困难,因为它们并不显示像过多液体、肺结核(TB)或囊肿等已知的生物异常情况。需要检测、定位这些异物,将其归类为NBFO或BFO,并从胸部X光片中移除或在X光片中突出显示,以便进行有效的异常分析。非常具体地说,NBFO会对这个过程产生不利影响,因为典型的机器学习算法会将这些物体视为产生假阳性病例的生物异常情况。对于胸部X光片中的BFO也是如此。本文除了探讨计算机辅助检测(CADe)与诊断(CADx)工具外,还详细讨论了众多临床报告,其中应用了浅层学习和深度学习算法。我们的讨论通过考虑29篇经过同行评审的研究报告和文章,反映了在胸部X光片中准确检测、分离、分类以及移除或突出显示NBFO和BFO的重要性。