A quantitative super-resolution imaging toolbox for diagnosis of motile ciliopathies
Author(s) -
Zhen Liu,
Quynh Nguyen,
Qingxu Guan,
Alexandra Albulescu,
Lauren Erdman,
Yasaman Mahdaviyeh,
Jasmine Kang,
Hong Ouyang,
Richard G. Hegele,
Theo J. Moraes,
Anna Goldenberg,
Sharon Dell,
Vito Mennella
Publication year - 2020
Publication title -
science translational medicine
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 6.819
H-Index - 216
eISSN - 1946-6242
pISSN - 1946-6234
DOI - 10.1126/scitranslmed.aay0071
Subject(s) - ciliopathies , primary ciliary dyskinesia , cilium , resolution (logic) , medicine , toolbox , neuroscience , biology , computer science , artificial intelligence , microbiology and biotechnology , genetics , phenotype , bronchiectasis , lung , gene , programming language
Airway clearance of pathogens and particulates relies on motile cilia. Impaired cilia motility can lead to reduction in lung function, lung transplant, or death in some cases. More than 50 proteins regulating cilia motility are linked to primary ciliary dyskinesia (PCD), a heterogeneous, mainly recessive genetic lung disease. Accurate PCD molecular diagnosis is essential for identifying therapeutic targets and for initiating therapies that can stabilize lung function, thereby reducing socioeconomic impact of the disease. To date, PCD diagnosis has mainly relied on nonquantitative methods that have limited sensitivity or require a priori knowledge of the genes involved. Here, we developed a quantitative super-resolution microscopy workflow: (i) to increase sensitivity and throughput, (ii) to detect structural defects in PCD patients' cells, and (iii) to quantify motility defects caused by yet to be found PCD genes. Toward these goals, we built a localization map of PCD proteins by three-dimensional structured illumination microscopy and implemented quantitative image analysis and machine learning to detect protein mislocalization, we analyzed axonemal structure by stochastic optical reconstruction microscopy, and we developed a high-throughput method for detecting motile cilia uncoordination by rotational polarity. Together, our data show that super-resolution methods are powerful tools for improving diagnosis of motile ciliopathies.
Accelerating Research
Robert Robinson Avenue,
Oxford Science Park, Oxford
OX4 4GP, United Kingdom
Address
John Eccles HouseRobert Robinson Avenue,
Oxford Science Park, Oxford
OX4 4GP, United Kingdom