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The genetic framework of primary ciliary dyskinesia assessed by soft computing analysis
被引:0
|作者:
Pifferi, Massimo
[1
,9
]
Boner, Attilio L.
[2
]
Cangiotti, Angela
[3
]
Cudazzo, Alessandro
[4
]
Maj, Debora
[1
]
Gracci, Serena
[1
]
Michelucci, Angela
[5
]
Bertini, Veronica
[6
]
Piazza, Michele
[2
]
Valetto, Angelo
[6
]
Caligo, Maria Adelaide
[5
]
Peroni, Diego
[1
]
Bush, Andrew
[7
,8
]
机构:
[1] Univ Hosp Pisa, Dept Pediat, Pisa, Italy
[2] Verona Univ, Dept Surg Sci Dent Gynecol & Pediat, Pediat Unit, Med Sch, Verona, Italy
[3] Univ Hosp Ancona, Dept Expt & Clin Med, Electron Microscopy Unit, Ancona, Italy
[4] Univ Pisa, Dept Comp Sci, Pisa, Italy
[5] Univ Hosp Pisa, Dept Lab Med, Unit Mol Genet, Pisa, Italy
[6] Univ Hosp Pisa, Dept Lab Med, Sect Cytogenet, Pisa, Italy
[7] Imperial Coll, Dept Paediat Resp Med, London, England
[8] Royal Brompton Hosp, London, England
[9] Univ Hosp Pisa, Dept Pediat, Via Roma 67, I-56126 Pisa, Italy
关键词:
artificial intelligence;
ciliary motion analysis;
ciliary ultrastructure;
genetic abnormalities;
primary ciliary dyskinesia;
DIAGNOSIS;
D O I:
10.1002/ppul.26842
中图分类号:
R72 [儿科学];
学科分类号:
100202 ;
摘要:
BackgroundInternational guidelines disagree on how best to diagnose primary ciliary dyskinesia (PCD), not least because many tests rely on pattern recognition. We hypothesized that quantitative distribution of ciliary ultrastructural and motion abnormalities would detect most frequent PCD-causing groups of genes by soft computing analysis.MethodsArchived data on transmission electron microscopy and high-speed video analysis from 212 PCD patients were re-examined to quantitate distribution of ultrastructural (10 parameters) and functional ciliary features (4 beat pattern and 2 frequency parameters). The correlation between ultrastructural and motion features was evaluated by blinded clustering analysis of the first two principal components, obtained from ultrastructural variables for each patient. Soft computing was applied to ultrastructure to predict ciliary beat frequency (CBF) and motion patterns by a regression model. Another model classified the patients into the five most frequent PCD-causing gene groups, from their ultrastructure, CBF and beat patterns.ResultsThe patients were subdivided into six clusters with similar values to homologous ultrastructural phenotype, motion patterns, and CBF, except for clusters 1 and 4, attributable to normal ultrastructure. The regression model confirmed the ability to predict functional ciliary features from ultrastructural parameters. The genetic classification model identified most of the different groups of genes, starting from all quantitative parameters.ConclusionsApplying soft computing methodologies to PCD diagnostic tests optimizes their value by moving from pattern recognition to quantification. The approach may also be useful to evaluate atypical PCD, and novel genetic abnormalities of unclear disease-producing potential in the future.
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页码:891 / 898
页数:8
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