335 research outputs found
Maternal metabolic health and neurodevelopmental conditions in offspring
Background
Observational studies published in the last decade have indicated relationships between
maternal “overnutrition” states and offspring neurodevelopmental conditions (NDCs), such as
autism, attention deficit/hyperactivity disorder (ADHD), and intellectual disability (ID).
“Maternal overnutrition” states have been characterized by a series of metabolic conditions
before pregnancy (i.e., overweight/obesity, Type I [T1DM] and II [T2DM] diabetes) and during
pregnancy (i.e., gestational diabetes mellitus [GDM] and excessive gestational weight gain
[GWG]). NDCs often co-occur and have multifactorial etiologies, shaped by both genetic and
environmental factors. However, previous studies have not thoroughly considered these
complex etiologies when examining associations. For instance, they did not explore whether
the relationships between maternal diabetes and offspring NDCs could differ based on the cooccurrence
of NDCs or be influenced by genetic predispositions. Moreover, as the fetal brain
evolves dramatically and sequentially during pregnancy, it accentuates the need for
epidemiological studies to account for the timing and intensity of perturbations during this
period. Prior research hasn’t determined whether relationships between maternal conditions
such as excessive GWG or hyperglycemia and offspring NDCs could differ based on the GWG
rate and glucose concentrations at different pregnancy phases. Maternal overweight/obesity and
diabetes might be associated with offspring NDCs due to complications encountered during
pregnancy, childbirth, and the neonatal period. Research has suggested that these complications
lie at the intersection of, and relate to, maternal metabolic conditions and offspring NDCs.
Grasping the mediation of these complications can offer deeper insights into preventative
measures during these stages; however, no studies have yet quantified these complications’
mediating impact on the associations. Lastly, the causal influence of BMI, including maternal
BMI, on offspring autism and ADHD has seldom been thoroughly explored. In the absence of
compelling evidence, the question remains as to whether better weight management among
obese women before conception could help reduce the potential risks of offspring NDCs.
Methods
We used two databases, “Psychiatry Sweden (PS), 1987-2016” and “Developmental Origins of
Health And Disease (DOHAD), 1997-2021”, which are register linkages across Swedish
nationwide registers using the unique identification number assigned to each Swedish resident.
Offspring were linked to their biological mothers, fathers, and maternal grandparents using the
Total Population Register (Study I, IV, V). We also used a series of maternal weight and
capillary glucose records across pregnancy from the Stockholm Obstetrix system, an electronic
medical journal of antenatal care, which was nested within the “Stockholm Youth Cohort
(SYC)”. The SYC is a part of PS that also includes regional health and administrative registers
(Study II, III). In Studies I, IV, and V, we used the National Patient Register to identify
offspring NDCs (i.e., autism, ADHD, and ID), which was supplemented by regional register
information in Studies II and III as well as the National Prescribed Drug Register (for ADHD).
Finally, we utilized genetic data and information from mothers and children in the “Avon
Longitudinal Study of Parents and Children (ALSPAC)” cohort (Study V).
In Study I, we utilized a generalized estimating equation (GEE)/population average model with
a logit link. This model was clustered based on pseudonymized maternal identification numbers
and employed robust standard errors for the computation of odds ratios (ORs) and 95%
confidence intervals (CIs) regarding neurodevelopmental conditions (NDCs) in offspring. In
Study II, we used Cox regression models, again clustered on maternal numbers and with robust
standard errors, to determine hazard ratios (HRs) and 95% CIs for offspring NDCs. In Study
III, we employed group-based trajectory modeling (GBTM) to ascertain the varying patterns
of glucose alteration throughout pregnancy. GEE models were utilized to evaluate the
associations with both obstetric and neonatal outcomes and offspring NDCs. In Study IV, we
used a parametric regression approach within a counterfactual framework to conduct both single
and multiple mediation analyses. This study aimed to quantify the total effect (TE), natural
indirect effects (NIE), and natural direct effects (NDE) in the associations of maternal diabetes
(both pregestational diabetes mellitus [PGDM] and GDM) and overweight/obesity with NDCs
through individual components of mediators. We employed a paternal negative control
comparison analysis in Study I to examine if the associations of maternal T1DM and T2DM
with offspring NDCs could be confounded by genetic predispositions to diabetes and NDCs. In
Study V, we applied a “triangulation” approach. Analyses were performed using maternal
cousin and full sibling comparisons to address unobserved, shared genetic and environmental
factors in the associations between maternal BMI and offspring autism and ADHD. In addition,
we explored the genetic correlation through Linkage Disequilibrium Score Regression (LDSC).
Moreover, we examined the association between the genetic predisposition to both maternal
and children’s BMI and various traits of children’s autism and ADHD using Polygenic Risk
Score (PRS) analysis. Lastly, we employed a two-sample Mendelian randomization analysis
(MR) in Study V to evaluate the causal impacts of BMI on NDCs, including autism and ADHD.
Results
Maternal T1DM, T2DM, and GDM were all associated with offspring autism, ADHD, and ID,
with greater risks linked to comorbid diagnoses involving ID. Stronger associations with GDM
were observed when diagnosed between 27-30 wkGA. Paternal T1DM and T2DM were also
associated with offspring NDCs, though the strength of these associations was less than those
observed with maternal diabetes (Study I). Lower rates of GWG in the second trimester and
higher rates of GWG in the third trimester were associated with increased risks for offspring
NDCs (Study II). Among those without PGDM, persistently high glucose levels throughout
pregnancy demonstrated the strongest association with adverse obstetric/neonatal
complications. Transient hyperglycemic states followed by periods of potential glycemic
control were also associated with these complications but to a lesser extent. Notably, subclinical
states of hyperglycemia, which were less likely to receive a GDM diagnosis, remained
associated with these complications, albeit to a lesser degree. A similar pattern of associations
was observed for offspring NDCs. Persistently high glucose levels showed stronger
associations with offspring NDCs (i.e., ADHD only), while weaker associations were identified
with transient hyperglycemic states followed by improved glucose control. Notably, we found
that hyperglycemia in early pregnancy, but not in mid-pregnancy, was associated with offspring
NDCs when followed by improved glucose control. However, none of these associations
regarding NDC outcomes survived the false discovery rate correction using the Benjamini-
Hochberg approach (Study III). The joint mediating effects of all obstetric and neonatal
complications were more pronounced in the associations between PGDM and offspring NDCs
(accounting for 30-50% of the association) than in those concerning maternal GDM and
overweight/obesity. Although the mediating effects of obstetric and neonatal complications
were generally insignificant for GDM and minor for maternal overweight/obesity, we observed
direct associations between GDM (10-30% increased risks compared to non-diabetes) and
maternal overweight/obesity (30-60% increased risks compared to normal weight) with the
risks of offspring NDCs. However, these associations might still contain residual confounding
due to unobserved factors. The combined mediating effects of these complications, especially
those emerging during the neonatal period, were particularly strong in the relationship between
maternal PGDM and offspring NDCs. For individual mediators, the effects were generally
minimal, except for complications such as pregnancy hypertensive diseases, preterm birth,
neonatal asphyxia, and hematological comorbidities in the association between PGDM and
offspring NDCs (with proportions mediated exceeding 10%) (Study IV). Maternal obesity was
linked to increased risks of autism and ADHD in both the full cohort analysis and family designs
(i.e., maternal cousin comparisons and full sibling analyses). It is worth noting that when
accounting for shared familial factors in family designs, the associations were attenuated but
modest associations remained. For instance, among full siblings, children exposed to maternal
obesity had a 0.87% higher risk of autism and a 2.13% higher risk of ADHD at age 16,
compared to those exposed to mothers of normal weight. The LDSC analysis showed a genetic
correlation between BMI and ADHD, but not with autism. The PRS analysis provided less
evidence suggesting a relationship between maternal and children’s genetic liability to BMI and
various autism and ADHD traits. Specifically, a one-unit increase in BMI was associated with
a 12% higher risk for autism and a 77% increased risk for ADHD (Study V).
Conclusions
In conclusion, my research has reaffirmed known associations between maternal metabolic
conditions and offspring NDCs while providing new insights into the underlying mechanisms
and causal relationships. Greater associations between maternal diabetes and NDCs involving
ID suggested distinct pathophysiological mechanisms. The associations involving PGDM and
offspring NDCs might be partially confounded by a genetic predisposition to both the exposure
and outcomes; however, its intrauterine effects cannot be completely discounted. Further
investigation into the causal link is still warranted in the future. To reduce the risk of offspring
NDCs associated with maternal PGDM, it can be beneficial to manage specific obstetric and
neonatal complications, especially those arising during the neonatal period. For maternal GDM
and overweight/obesity, although we found direct associations with NDCs without evident
mediating effects from obstetric and neonatal complications, these direct associations might
still contain residual confounding due to unobserved factors. GDM during weeks 27-30 of
gestation showed a more pronounced association with offspring NDCs. However, women with
hyperglycemia in mid-pregnancy who subsequently achieved effective glucose control did not
have a notable increased risk of NDCs among their offspring. While this suggests that effective
glucose management during mid-pregnancy might benefit offspring neurodevelopment, further
studies are needed to confirm a causal link. My research provides evidence of a modest causal
relationship between maternal BMI and offspring autism and ADHD. Further, a lower rate of
GWG in the second trimester and a higher rate in the third trimester were more strongly
associated with offspring NDCs. This suggests that continuous monitoring and potential
interventions related to weight and weight gain from conception onward could have a positive,
albeit modest, impact on reducing the risks of offspring NDCs, such as autism and ADHD
Research on damping parameter identification of elastomer buffer
The object of this paper is the changing process of damping force as the falling weight impacting the elastomer buffer. The whole mechanical system is built up through practical test and simulation. According to the type of elastomer buffer and the experimental process in shock environment, velocity damping force identification model was established. Wavelet denoising and least square method were used for parameter identification of damping force. Considering the data saturation problem in the traditional least square method, the limited memory least square method was obtained to improve the identification method. The results of parameter identification of damping force based on limited memory method proved that the limited memory method was superior to least square method. The numerical results demonstrate the effectiveness of the identification model
A novel iterative approach for mapping local singularities from geochemical data
International audienceThere are many phenomena in nature, such as earthquakes, landslides, floods, and large-scale mineralization that are characterized by singular functions exhibiting scale invariant properties. A local singularity analysis based on multifractal modeling was developed for detection of local anomalies for mineral exploration. An iterative approach is proposed in the current paper for improvement of parameter estimations involved in the local singularity analysis. The advantage of this new approach is demonstrated with de Wijs's zinc data from a sphalerite-quartz vein near Pulacayo in Bolivia. The semivariogram method was used to illustrate the differences between the raw data and the estimated data by the new algorithm. It has been shown that the outcome of the local singularity analysis consists of two components: singularity component characterized by local singularity index and the non-singular component by prefractal parameter
Experimental study on a certain elastomer buffer with dynamic identification method
The damping force of elastomer buffer in shock environment is the research object of this paper. The impact experiment and data simulation are used to understand the whole mechanical system. Equation with velocity and damping force is used for modeling according to the specific type of the elastomer buffer. The data of velocity and damping force is obtained by experimental data collection and pretreatment. Genetic algorithm is used to identify parameters according to the time invariant feature of traditional model. Through the results of parameter identification by genetic algorithm it seems that the parameters have the time-varying characteristics. Therefore, time-varying method is used for parameter identification. Limited memory method, which is obtained by the improvement of traditional least square method, is used for time-varying parameter identification. And the fitting accuracy of the identification results is better than that of genetic algorithm. The numerical results prove that the model is effective and parameters are time-varying
Stacking-dependent electronic structure of trilayer graphene resolved by nanospot angle-resolved photoemission spectroscopy
The crystallographic stacking order in multilayer graphene plays an important
role in determining its electronic structure. In trilayer graphene,
rhombohedral stacking (ABC) is particularly intriguing, exhibiting a flat band
with an electric-field tunable band gap. Such electronic structure is distinct
from simple hexagonal stacking (AAA) or typical Bernal stacking (ABA), and is
promising for nanoscale electronics, optoelectronics applications. So far clean
experimental electronic spectra on the first two stackings are missing because
the samples are usually too small in size (um or nm scale) to be resolved by
conventional angle-resolved photoemission spectroscopy (ARPES). Here by using
ARPES with nanospot beam size (NanoARPES), we provide direct experimental
evidence for the coexistence of three different stackings of trilayer graphene
and reveal their distinctive electronic structures directly. By fitting the
experimental data, we provide important experimental band parameters for
describing the electronic structure of trilayer graphene with different
stackings
Research on parameter identification of nonlinear friction on cantilever beam
Free section friction on cantilever beam is the object in this paper. Practical experiment and virtual simulation are combined to gain understanding of the whole mechanical system. The classical Tustin model cannot provide perfect description of the actual friction process. Friction compensation model 1 is established through introducing time-varying compensation into the classical Tustin model based on the classical friction model and the theory of Fourier transform. A modified genetic algorithm is proposed by introducing self-adaptive strategy. The parameter identification based on the time-varying friction compensation model is performed by using the modified genetic algorithm. Friction compensation model 2 is established by introducing the improved time-varying compensation strategies which are more in line with the friction process. The numerical results demonstrate the high iterative search capability and computation efficiency of friction compensation model 2
Application of local singularity in prospecting potential oil/gas Targets
International audienceTogether with generalized self-similarity and the fractal spectrum, local singularity analysis has been introduced as one part of the new 3S principle and technique for mineral resource assessment based on multifractal modeling, which has been demonstrated to be useful for anomaly delineation. Local singularity is used in this paper to characterize the property of multifractal distribution patterns of geochemical indexes to delineate potential areas for oil/gas exploration using the advanced GeoDAS GIS technology. Geochemical data of four oil/gas indexes, consisting of acid-extracted methane (SC1), ethane (SC2), propane (SC3), and secondary carbonate (?C), from 9637 soil samples amassed within a large area of 11.2Ă—104 km2 in the Songpan-Aba district, Sichuan Province, southwestern China, were analyzed. By eliminating the interference of geochemical oil/gas data with the method of media-modification and Kriging, the prospecting area defined by the local singularity model is better identified and the results show that the subareas with higher singularity exponents for the four oil/gas indexes are potential targets for oil/gas exploration. These areas in the shape of rings or half-rings are spatially associated with the location of the known producing drilling well in this area. The spatial relationship between the anomalies delineated by oil/gas geochemical data and distribution patterns of local singularity exponents is confirmed by using the stable isotope of ?13C
LncRNA CERS6-AS1, sponging miR-6838-5p, promotes proliferation and invasion in cervical carcinoma cells by upregulating FOXP2
Cervical cancer (CC) is a common disease in
women characterized by high recurrence rate. LncRNA
ceramide synthase 6 antisense RNA 1 (CERS6-AS1) has
been found to play a crucial role in the progression of
breast cancer and pancreatic cancer. Nevertheless, the
regulatory role of CERS6-AS1 in CC remains largely
unclear. Here, we found that the expression of CERS6-
AS1 was upregulated in CC tissues and cell lines
compared with adjacent tissues and normal human
cervical epithelial cells. CERS6-AS1 overexpression
promoted proliferation and invasion, and inhibited
apoptosis in CC cells, while silencing of CERS6-AS1
led to the opposite results. CERS6-AS1 was verified as a
sponge of miR-6838-5p by RNA pull-down and
luciferase reporter gene assays. Functional investigations
revealed that CERS6-AS1 knockdown inhibited
proliferation and invasion, and promoted apoptosis in
CC cells, which was reversed by miR-6838-5p inhibitor.
Furthermore, forkhead box P2 (FOXP2) was identified
as a target for miR-6838-5p, and overexpression of miR6838-5p decreased the expression level of FOXP2.
Besides, CERS6-AS1 was able to sponge miR-6838-5p
to accelerate CC cell proliferation and invasion and
inhibited cell apoptosis through upregulating FOXP2
expression. In general, CERS6-AS1 was able to regulate
CC cell proliferation, invasion and apoptosis by the
miR-6838-5p/FOXP2 axis, which suggested that
CERS6-AS1 may be a potential target for the treatment
of CC
Ag-Decorated Fe 3
Well-dispersed Ag nanoparticles (NPs) are successfully decorated on Fe3O4@SiO2 nanorods (NRs) via a facile step-by-step strategy. This method involves coating α-Fe2O3 NRs with uniform silica layer, reduction in 10% H2/Ar atmosphere at 450°C to obtain Fe3O4@SiO2 NRs, and then depositing Ag NPs on the surface of Fe3O4@SiO2 NRs through a sonochemical step. It was found that the as-prepared Ag-decorated magnetic Fe3O4@SiO2 NRs (Ag-MNRs) exhibited a higher catalytic efficiency than bare Ag NPs in the degradation of organic dye and could be easily recovered by convenient magnetic separation, which show great application potential for environmental protection applications
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