Science and Research

Validation of automated lobe segmentation on paired inspiratory-expiratory chest CT in 8-14 year-old children with cystic fibrosis

OBJECTIVES: Densitometry on paired inspiratory and expiratory multidetector computed tomography (MDCT) for the quantification of air trapping is an important approach to assess functional changes in airways diseases such as cystic fibrosis (CF). For a regional analysis of functional deficits, an accurate lobe segmentation algorithm applicable to inspiratory and expiratory scans is beneficial. MATERIALS AND METHODS: We developed a fully automated lobe segmentation algorithm, and subsequently validated automatically generated lobe masks (ALM) against manually corrected lobe masks (MLM). Paired inspiratory and expiratory CTs from 16 children with CF (mean age 11.1+/-2.4) acquired at 4 time-points (baseline, 3mon, 12mon, 24mon) with 2 kernels (B30f, B60f) were segmented, resulting in 256 ALM. After manual correction spatial overlap (Dice index) and mean differences in lung volume and air trapping were calculated for ALM vs. MLM. RESULTS: The mean overlap calculated with Dice index between ALM and MLM was 0.98+/-0.02 on inspiratory, and 0.86+/-0.07 on expiratory CT. If 6 lobes were segmented (lingula treated as separate lobe), the mean overlap was 0.97+/-0.02 on inspiratory, and 0.83+/-0.08 on expiratory CT. The mean differences in lobar volumes calculated in accordance with the approach of Bland and Altman were generally low, ranging on inspiratory CT from 5.7+/-52.23cm3 for the right upper lobe to 17.41+/-14.92cm3 for the right lower lobe. Higher differences were noted on expiratory CT. The mean differences for air trapping were even lower, ranging from 0+/-0.01 for the right upper lobe to 0.03+/-0.03 for the left lower lobe. CONCLUSIONS: Automatic lobe segmentation delivers excellent results for inspiratory and good results for expiratory CT. It may become an important component for lobe-based quantification of functional deficits in cystic fibrosis lung disease, reducing necessity for user-interaction in CT post-processing.

  • Konietzke, P.
  • Weinheimer, O.
  • Wielputz, M. O.
  • Savage, D.
  • Ziyeh, T.
  • Tu, C.
  • Newman, B.
  • Galban, C. J.
  • Mall, M. A.
  • Kauczor, H. U.
  • Robinson, T. E.

Keywords

  • Adolescent
  • Algorithms
  • Automation
  • Child
  • Cystic Fibrosis/diagnostic imaging/*physiopathology
  • *Exhalation
  • Female
  • Humans
  • *Inhalation
  • Lung/diagnostic imaging/*physiopathology
  • Lung Volume Measurements
  • Male
  • Prospective Studies
  • Thorax/diagnostic imaging/*physiopathology
  • Tomography, X-Ray Computed/*methods
Publication details
DOI: 10.1371/journal.pone.0194557
Journal: PloS one
Pages: e0194557 
Number: 4
Work Type: Original
Location: TLRC
Disease Area: CFBE
Partner / Member: UKHD
Access-Number: 29630630
See publication on PubMed

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