scholarly journals Low resolution scans provide a sufficiently accurate, cost- and time-effective alternative to high resolution scans for interspecific 3D shape analyses

Author(s):  
Ariel E Marcy ◽  
Carmelo Fruciano ◽  
Matthew J Phillips ◽  
Karine Mardon ◽  
Vera Weisbecker

Background. Advances in three-dimensional (3D) shape capture technology have made powerful shape analyses, such as geometric morphometrics, more feasible. While the highly accurate micro-computed tomography (μCT) scanners have been the “gold standard,” recent improvements in 3D surface scanner resolution may make this technology a faster, more portable, and cost-effective alternative. Several studies have already compared the two scanning devices but all use relatively large specimens such as human crania. Here we perform shape analyses on Australia’s smallest rodent species to test whether a 3D surface scanner produces similar results to a μCT scanner. Methods. We captured 19 delicate mouse crania with a μCT scanner and a 3D surface scanner for geometric morphometrics. We ran multiple Procrustes ANOVAs to understand how variation due to scan device compared to other sources of variation such as biologically relevant sources and operator error. We quantified operator error with morphological disparity and repeatability. Finally, we tested whether the different scan datasets could detect intra-specific variation using cross-validation classification. Shape patterns were visualized with Principal Component Analysis (PCA) plots. Results. In all Procrustes ANOVAs, regardless of factors included, differences between individuals contributed the most to total variation. This is also reflected in the way individuals disperse on the PCA plots. Including only the symmetric component of shape increased the biological signal relative to variation due to device and due to error. 3D scans create a higher level of operator error as evidenced by a greater spread of their replicates on the PCA, a higher morphological disparity, and a lower repeatability score. However, in the test for small intra-specific differences, the 3D scan and μCT scan datasets performed identically. Discussion. Compared to μCT scans, we find that even very low resolution 3D scans of very small specimens are sufficiently accurate to capture variation at the level of interspecific differences. We also make three recommendations for best use of low resolution data. First, we recommend analyzing the symmetric component of shape to decrease signal from operator error. Second, using 3D scans generates more random error due to increased landmarking difficulty, therefore be conservative in landmark choice and avoid multiple operators. Third, using 3D scans introduces a source of systematic error relative to μCT scans, therefore do not combine them when possible and especially in studies with little variation. Our findings support increased use of low resolution 3D images for most morphological studies; they are likely applicable to low resolution scans of large specimens made in a medical CT scanner, for example. As most vertebrates are relatively small, we anticipate our results to bolster more researchers designing affordable large scale studies on small specimens with 3D surface scanners.

Author(s):  
Ariel E Marcy ◽  
Carmelo Fruciano ◽  
Matthew J Phillips ◽  
Karine Mardon ◽  
Vera Weisbecker

Background. Advances in three-dimensional (3D) shape capture technology have made powerful shape analyses, such as geometric morphometrics, more feasible. While the highly accurate micro-computed tomography (μCT) scanners have been the “gold standard,” recent improvements in 3D surface scanner resolution may make this technology a faster, more portable, and cost-effective alternative. Several studies have already compared the two scanning devices but all use relatively large specimens such as human crania. Here we perform shape analyses on Australia’s smallest rodent species to test whether a 3D surface scanner produces similar results to a μCT scanner. Methods. We captured 19 delicate mouse crania with a μCT scanner and a 3D surface scanner for geometric morphometrics. We ran multiple Procrustes ANOVAs to understand how variation due to scan device compared to other sources of variation such as biologically relevant sources and operator error. We quantified operator error with morphological disparity and repeatability. Finally, we tested whether the different scan datasets could detect intra-specific variation using cross-validation classification. Shape patterns were visualized with Principal Component Analysis (PCA) plots. Results. In all Procrustes ANOVAs, regardless of factors included, differences between individuals contributed the most to total variation. This is also reflected in the way individuals disperse on the PCA plots. Including only the symmetric component of shape increased the biological signal relative to variation due to device and due to error. 3D scans create a higher level of operator error as evidenced by a greater spread of their replicates on the PCA, a higher morphological disparity, and a lower repeatability score. However, in the test for small intra-specific differences, the 3D scan and μCT scan datasets performed identically. Discussion. Compared to μCT scans, we find that even very low resolution 3D scans of very small specimens are sufficiently accurate to capture variation at the level of interspecific differences. We also make three recommendations for best use of low resolution data. First, we recommend analyzing the symmetric component of shape to decrease signal from operator error. Second, using 3D scans generates more random error due to increased landmarking difficulty, therefore be conservative in landmark choice and avoid multiple operators. Third, using 3D scans introduces a source of systematic error relative to μCT scans, therefore do not combine them when possible and especially in studies with little variation. Our findings support increased use of low resolution 3D images for most morphological studies; they are likely applicable to low resolution scans of large specimens made in a medical CT scanner, for example. As most vertebrates are relatively small, we anticipate our results to bolster more researchers designing affordable large scale studies on small specimens with 3D surface scanners.


PeerJ ◽  
2018 ◽  
Vol 6 ◽  
pp. e5032 ◽  
Author(s):  
Ariel E. Marcy ◽  
Carmelo Fruciano ◽  
Matthew J. Phillips ◽  
Karine Mardon ◽  
Vera Weisbecker

BackgroundAdvances in 3D shape capture technology have made powerful shape analyses, such as geometric morphometrics, more feasible. While the highly accurate micro-computed tomography (µCT) scanners have been the “gold standard,” recent improvements in 3D surface scanners may make this technology a faster, portable, and cost-effective alternative. Several studies have already compared the two devices but all use relatively large specimens such as human crania. Here we perform shape analyses on Australia’s smallest rodent to test whether a 3D scanner produces similar results to a µCT scanner.MethodsWe captured 19 delicate mouse (Pseudomys delicatulus) crania with a µCT scanner and a 3D scanner for geometric morphometrics. We ran multiple Procrustes ANOVAs to test how variation due to scan device compared to other sources such as biologically relevant variation and operator error. We quantified operator error as levels of variation and repeatability. Further, we tested if the two devices performed differently at classifying individuals based on sexual dimorphism. Finally, we inspected scatterplots of principal component analysis (PCA) scores for non-random patterns.ResultsIn all Procrustes ANOVAs, regardless of factors included, differences between individuals contributed the most to total variation. The PCA plots reflect this in how the individuals are dispersed. Including only the symmetric component of shape increased the biological signal relative to variation due to device and due to error. 3D scans showed a higher level of operator error as evidenced by a greater spread of their replicates on the PCA, a higher level of multivariate variation, and a lower repeatability score. However, the 3D scan and µCT scan datasets performed identically in classifying individuals based on intra-specific patterns of sexual dimorphism.DiscussionCompared to µCT scans, we find that even low resolution 3D scans of very small specimens are sufficiently accurate to classify intra-specific differences. We also make three recommendations for best use of low resolution data. First, we recommend that extreme caution should be taken when analyzing the asymmetric component of shape variation. Second, using 3D scans generates more random error due to increased landmarking difficulty, therefore users should be conservative in landmark choice and avoid multiple operators. Third, using 3D scans introduces a source of systematic error relative to µCT scans, therefore we recommend not combining them when possible, especially in studies expecting little biological variation. Our findings support increased use of low resolution 3D scans for most morphological studies; they are likely also applicable to low resolution scans of large specimens made in a medical CT scanner. As most vertebrates are relatively small, we anticipate our results will bolster more researchers in designing affordable large scale studies on small specimens with 3D surface scanners.


2014 ◽  
Vol 50 ◽  
pp. 34-42
Author(s):  
Matthew Shreve ◽  
Mauricio Pamplona ◽  
Timur Luguev ◽  
Dmitry Goldgof ◽  
Sudeep Sarkar

2017 ◽  
Vol 18 (1) ◽  
Author(s):  
Luis Huanca Ghislanzoni ◽  
Roberta Lione ◽  
Paola Cozza ◽  
Lorenzo Franchi

2020 ◽  
Vol 130 (4) ◽  
pp. 800-812 ◽  
Author(s):  
Juan Vrdoljak ◽  
Kevin Imanol Sanchez ◽  
Roberto Arreola-Ramos ◽  
Emilce Guadalupe Diaz Huesa ◽  
Alejandro Villagra ◽  
...  

Abstract The repeatability of findings is the key factor behind scientific reliability, and the failure to reproduce scientific findings has been termed the ‘replication crisis’. Geometric morphometrics is an established tool in evolutionary biology. However, different operators (and/or different methods) could act as large sources of variation in the data obtained. Here, we investigated inter-operator error in geometric morphometric protocols on complex shapes of Liolaemus lizards, as well as measurement error in three taxa varying in their difficulty of digitalization. We also examined the potential for these protocols to discriminate among complex shapes in closely related species. We found a wide range of inter-operator error, contributing between 19.5% and 60% to the total variation. Moreover, measurement error increased with the complexity of the quantified shape. All protocols were able to discriminate between species, but the use of more landmarks did not imply better performance. We present evidence that complex shapes reduce repeatability, highlighting the need to explore different sources of variation that could lead to such low repeatability. Lastly, we suggest some recommendations to improve the repeatability and reliability of geometric morphometrics results.


2012 ◽  
Vol 30 (6-7) ◽  
pp. 398-416 ◽  
Author(s):  
Anuj Srivastava ◽  
Pavan Turaga ◽  
Sebastian Kurtek

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