| Literature DB >> 29084564 |
Weijian Cong1,2, Jian Yang3, Danni Ai4, Hong Song5, Gang Chen6, Xiaohui Liang2, Ping Liang6, Yongtian Wang1.
Abstract
BACKGROUND: 3D ultrasound volume reconstruction from B-model ultrasound slices can provide more clearly and intuitive structure of tissue and lesion for the clinician.Entities:
Keywords: 3D ultrasound reconstruction; Matching patch; Optimal contribution range
Mesh:
Year: 2017 PMID: 29084564 PMCID: PMC5661982 DOI: 10.1186/s12938-017-0411-2
Source DB: PubMed Journal: Biomed Eng Online ISSN: 1475-925X Impact factor: 2.819
Fig. 1Outline of the ultrasound reconstruction algorithm
Fig. 2Relationship between ultrasound slices and 3D volume
Fig. 3The hole filling method based on image texture
Pseudocode for the proposed GPM algorithm
Fig. 4Comparison of different reconstruction methods over data 1. A1 3D rendering of ultrasound volume. A2 Cross-section of the ultrasound volume. A3 Ultrasound slice. A4 Ultrasound slice with holes. B–H Correspond to reconstruction results of the VNN, PNN, DW, FMM, KR, BI and the proposed GPM methods. The third column shows the magnified regions of interest corresponding to the second column
Comparing of reconstruction errors for all the five methods over three different vacant patches
| Method | Triangle patch | Rectangle patch | Square patch | Total | ||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Min | Max | Mean | SD | Min | Max | Mean | SD | Min | Max | Mean | SD | Min | Max | Mean | SD | |
| VNN | 1 | 48 | 8.376 | 9.649 | 1 | 46 | 6.382 | 6.762 | 1 | 41 | 7.122 | 7.484 | 1.000 | 45.000 | 7.319 | 8.163 |
| PNN | 1 | 42 | 7.556 | 9.365 | 2 | 43 | 7.569 | 7.673 | 1 | 44 | 6.799 | 6.993 | 1.333 | 43.000 | 7.144 | 7.842 |
| DW | 0 | 51 | 7.192 | 7.373 | 1 | 39 | 6.818 | 6.940 | 1 | 41 | 7.313 | 7.651 | 0.667 | 43.667 | 6.926 | 7.167 |
| FMM | 1 | 39 | 5.927 | 7.660 | 0 | 53 | 6.497 | 6.515 | 2 | 45 | 6.438 | 6.653 | 1.000 | 45.667 | 6.381 | 7.031 |
| KR | 1 | 43 | 5.219 | 6.643 | 1 | 46 | 6.416 | 6.461 | 1 | 51 | 6.109 | 6.428 | 1.000 | 46.667 | 5.915 | 6.511 |
| BI | 0 | 49 | 5.683 | 6.835 | 1 | 44 | 6.275 | 6.406 | 0 | 46 | 6.323 | 6.576 | 0.667 | 46.333 | 6.094 | 6.606 |
| GPM | 1 | 40 | 4.517 | 5.367 | 1 | 43 | 6.061 | 6.132 | 1 | 46 | 5.803 | 5.868 | 1.000 | 43.000 | 5.368 | 5.655 |
Fig. 5Comparison of different reconstruction results for data 2. A1 Volume rendering of the ultrasound data. A2 Ultrasound volume with vacant patches. A3 Cross-sections of the ultrasound volume data. A4 Ultrasound slice with vacant patches. A5 Original ultrasound slice. B–H Reconstruction results of the VNN, PNN, DW, FMM, KR, BI and GPM methods. The third column shows the magnified regions of interest corresponding to the second column
Comparison of the reconstruction results for different methods over different number of vacant slices
| Number of vacant slices | VNN | PNN | DW | FMM | KR | BI | GPM |
|---|---|---|---|---|---|---|---|
| 1 | |||||||
| Mean | 8.011 | 7.793 | 6.818 | 5.803 | 5.694 | 5.719 | 5.617 |
| SD | 8.144 | 7.750 | 6.861 | 5.896 | 5.835 | 5.840 | 5.820 |
| 2 | |||||||
| Mean | 8.425 | 8.493 | 7.972 | 6.509 | 6.437 | 6.513 | 6.360 |
| SD | 8.461 | 8.439 | 8.055 | 6.835 | 6.541 | 6.658 | 6.396 |
| 3 | |||||||
| Mean | 9.331 | 9.152 | 8.700 | 7.519 | 7.262 | 7.380 | 7.058 |
| SD | 9.634 | 9.442 | 8.707 | 7.612 | 7.355 | 7.557 | 7.285 |
| 4 | |||||||
| Mean | 10.689 | 10.283 | 9.500 | 8.277 | 7.729 | 7.905 | 7.539 |
| SD | 10.616 | 10.257 | 9.463 | 8.227 | 7.816 | 8.044 | 7.773 |
| 5 | |||||||
| Mean | 11.844 | 11.109 | 10.319 | 9.063 | 8.479 | 8.616 | 8.145 |
| SD | 11.867 | 11.172 | 10.269 | 8.983 | 8.650 | 8.843 | 8.155 |
| 6 | |||||||
| Mean | 12.604 | 12.211 | 11.343 | 9.618 | 8.881 | 9.272 | 8.554 |
| SD | 12.897 | 12.427 | 11.326 | 9.742 | 9.026 | 9.533 | 8.511 |
| 7 | |||||||
| Mean | 13.151 | 12.817 | 11.642 | 9.719 | 8.945 | 9.252 | 8.629 |
| SD | 13.117 | 12.727 | 11.569 | 9.979 | 9.177 | 9.510 | 8.729 |
| 8 | |||||||
| Mean | 13.365 | 13.128 | 11.863 | 9.953 | 9.345 | 9.618 | 8.727 |
| SD | 13.385 | 13.308 | 12.153 | 9.973 | 9.508 | 9.762 | 9.033 |
Fig. 6Comparing of the five reconstruction errors with respect to different size of removing patches
Fig. 7The reconstruction results with GPM method
Fig.8The abnormality reconstruction results with GPM method
Fig. 9The abnormality reconstruction errors with GPM method
Computational time complexity for VNN, PNN, DW, FMM, KR, BI and GPM algorithms
| Method | Computational time complexity | |
|---|---|---|
| Bin-filling scheme | Hole-filling strategy | |
| VNN | – |
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| PNN |
|
|
| DW | – |
|
| FMM |
|
|
| KR |
|
|
| BI | – |
|
| GPM |
|
|
,
Computational time for VNN, PNN, DW, FMM, KR, BI and GPM algorithms
| Method | Data set 1 | Data set 2 | Average | ||||
|---|---|---|---|---|---|---|---|
| Bin-filling scheme | Hole-filling strategy | Total | Bin-filling scheme | Hole-filling strategy | Total | ||
| VNN | – | 98.6 | 98.6 | – | 131.4 | 131.4 | 115.00 |
| PNN | 33.8 | 66.3 | 100.1 | 54.6 | 93.7 | 148.3 | 124.20 |
| DW | – | 203.5 | 203.5 | – | 323.7 | 323.7 | 263.60 |
| FMM | 39.1 | 62.4 | 101.5 | 55.7 | 83.8 | 139.5 | 120.50 |
| KR | 34.9 | 2491.5 | 2524.4 | 55.1 | 3294.4 | 3349.5 | 2937.0 |
| BI | – | 1715.5 | 1715.5 | – | 2611.3 | 2611.3 | 2163.4 |
| GPM | 43.5 | 145.6 | 189.1 | 61.1 | 231.7 | 292.8 | 240.95 |
Unit: second