Quinn Shannon P, Zahid Maliha J, Durkin John R, Francis Richard J, Lo Cecilia W, Chennubhotla S Chakra
Joint Carnegie Mellon-University of Pittsburgh Ph.D. Program in Computational Biology, Department of Computation and Systems Biology, University of Pittsburgh, Pittsburgh, PA 15260, USA. Department of Computational and Systems Biology, University of Pittsburgh School of Medicine, Pittsburgh, PA 15260, USA.
Department of Developmental Biology, University of Pittsburgh School of Medicine, Pittsburgh, PA 15201, USA.
Sci Transl Med. 2015 Aug 5;7(299):299ra124. doi: 10.1126/scitranslmed.aaa1233.
Motile cilia lining the nasal and bronchial passages beat synchronously to clear mucus and foreign matter from the respiratory tract. This mucociliary defense mechanism is essential for pulmonary health, because respiratory ciliary motion defects, such as those in patients with primary ciliary dyskinesia (PCD) or congenital heart disease, can cause severe sinopulmonary disease necessitating organ transplant. The visual examination of nasal or bronchial biopsies is critical for the diagnosis of ciliary motion defects, but these analyses are highly subjective and error-prone. Although ciliary beat frequency can be computed, this metric cannot sensitively characterize ciliary motion defects. Furthermore, PCD can present without any ultrastructural defects, limiting the use of other detection methods, such as electron microscopy. Therefore, an unbiased, computational method for analyzing ciliary motion is clinically compelling. We present a computational pipeline using algorithms from computer vision and machine learning to decompose ciliary motion into quantitative elemental components. Using this framework, we constructed digital signatures for ciliary motion recognition and quantified specific properties of the ciliary motion that allowed high-throughput classification of ciliary motion as normal or abnormal. We achieved >90% classification accuracy in two independent data cohorts composed of patients with congenital heart disease, PCD, or heterotaxy, as well as healthy controls. Clinicians without specialized knowledge in machine learning or computer vision can operate this pipeline as a "black box" toolkit to evaluate ciliary motion.
鼻腔和支气管通道内的运动性纤毛同步摆动,以清除呼吸道中的黏液和异物。这种黏液纤毛防御机制对肺部健康至关重要,因为呼吸性纤毛运动缺陷,如原发性纤毛运动障碍(PCD)患者或先天性心脏病患者的纤毛运动缺陷,可导致严重的鼻窦肺部疾病,需要进行器官移植。对鼻或支气管活检进行视觉检查对于诊断纤毛运动缺陷至关重要,但这些分析主观性很强且容易出错。虽然可以计算纤毛摆动频率,但该指标无法灵敏地表征纤毛运动缺陷。此外,PCD可能不存在任何超微结构缺陷,这限制了其他检测方法(如电子显微镜)的应用。因此,一种无偏倚的计算方法来分析纤毛运动在临床上很有吸引力。我们提出了一种计算流程,使用计算机视觉和机器学习算法将纤毛运动分解为定量的基本成分。利用这个框架,我们构建了用于纤毛运动识别的数字签名,并量化了纤毛运动的特定属性,从而能够对纤毛运动进行高通量分类,判断其正常或异常。在由先天性心脏病、PCD或内脏反位患者以及健康对照组成的两个独立数据队列中,我们实现了>90%的分类准确率。没有机器学习或计算机视觉专业知识的临床医生可以将这个流程作为一个“黑匣子”工具包来评估纤毛运动。