42 research outputs found
Co-training with High-Confidence Pseudo Labels for Semi-supervised Medical Image Segmentation
Consistency regularization and pseudo labeling-based semi-supervised methods
perform co-training using the pseudo labels from multi-view inputs. However,
such co-training models tend to converge early to a consensus, degenerating to
the self-training ones, and produce low-confidence pseudo labels from the
perturbed inputs during training. To address these issues, we propose an
Uncertainty-guided Collaborative Mean-Teacher (UCMT) for semi-supervised
semantic segmentation with the high-confidence pseudo labels. Concretely, UCMT
consists of two main components: 1) collaborative mean-teacher (CMT) for
encouraging model disagreement and performing co-training between the
sub-networks, and 2) uncertainty-guided region mix (UMIX) for manipulating the
input images according to the uncertainty maps of CMT and facilitating CMT to
produce high-confidence pseudo labels. Combining the strengths of UMIX with
CMT, UCMT can retain model disagreement and enhance the quality of pseudo
labels for the co-training segmentation. Extensive experiments on four public
medical image datasets including 2D and 3D modalities demonstrate the
superiority of UCMT over the state-of-the-art. Code is available at:
https://github.com/Senyh/UCMT
Interdisciplinary-driven hypotheses on spatial associations of mixtures of industrial air pollutants with adverse birth outcomes
Background: Adverse birth outcomes (ABO) such as prematurity and small for gestational age confer a high risk of mortality and morbidity. ABO have been linked to air pollution; however, relationships with mixtures of industrial emissions are poorly understood. The exploration of relationships between ABO and mixtures is complex when hundreds of chemicals are analyzed simultaneously, requiring the use of novel approaches. Objective: We aimed to generate robust hypotheses spatially linking mixtures and the occurrence of ABO using a spatial data mining algorithm and subsequent geographical and statistical analysis. The spatial data mining approach aimed to reduce data dimensionality and efficiently identify spatial associations between multiple chemicals and ABO. Methods: We discovered co-location patterns of mixtures and ABO in Alberta, Canada (2006–2012). An ad-hoc spatial data mining algorithm allowed the extraction of primary co-location patterns of 136 chemicals released into the air by 6279 industrial facilities (National Pollutant Release Inventory), wind-patterns from 182 stations, and 333,247 singleton live births at the maternal postal code at delivery (Alberta Perinatal Health Program), from which we identified cases of preterm birth, small for gestational age, and low birth weight at term. We selected secondary patterns using a lift ratio metric from ABO and non-ABO impacted by the same mixture. The relevance of the secondary patterns was estimated using logistic models (adjusted by socioeconomic status and ABO-related maternal factors) and a geographic-based assignment of maternal exposure to the mixtures as calculated by kernel density. Results: From 136 chemicals and three ABO, spatial data mining identified 1700 primary patterns from which five secondary patterns of three-chemical mixtures, including particulate matter, methyl-ethyl-ketone, xylene, carbon monoxide, 2-butoxyethanol, and n-butyl alcohol, were subsequently analyzed. The significance of the associations (odds ratio > 1) between the five mixtures and ABO provided statistical support for a new set of hypotheses. Conclusion: This study demonstrated that, in complex research settings, spatial data mining followed by pattern selection and geographic and statistical analyses can catalyze future research on associations between air pollutant mixtures and adverse birth outcomes
Proceedings of the International Workshop on Knowledge Discovery in Multimedia and Complex Data {(KDMCD} 2002), in conjunction with the Sixth Pacific-Asia Conference on Knowledge Discovery and Data Mining (PAKDD-02)
International audienc