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      Silica nanoparticle exposure inducing granulosa cell apoptosis and follicular atresia in female Balb/c mice

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          Air pollution: mechanisms of neuroinflammation and CNS disease.

          Air pollution has been implicated as a chronic source of neuroinflammation and reactive oxygen species (ROS) that produce neuropathology and central nervous system (CNS) disease. Stroke incidence and Alzheimer's and Parkinson's disease pathology are linked to air pollution. Recent reports reveal that air pollution components reach the brain; systemic effects that impact lung and cardiovascular disease also impinge upon CNS health. While mechanisms driving air pollution-induced CNS pathology are poorly understood, new evidence suggests that microglial activation and changes in the blood-brain barrier are key components. Here we summarize recent findings detailing the mechanisms through which air pollution reaches the brain and activates the resident innate immune response to become a chronic source of pro-inflammatory factors and ROS, culminating in CNS disease.
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            DNA damage-induced cell death by apoptosis.

            Following the induction of DNA damage, a prominent route of cell inactivation is apoptosis. During the last ten years, specific DNA lesions that trigger apoptosis have been identified. These include O6-methylguanine, base N-alkylations, bulky DNA adducts, DNA cross-links and DNA double-strand breaks (DSBs). Repair of these lesions are important in preventing apoptosis. An exception is O6-methylguanine-thymine lesions, which require mismatch repair for triggering apoptosis. Apoptosis induced by many chemical genotoxins is the consequence of blockage of DNA replication, which leads to collapse of replication forks and DSB formation. These DSBs are thought to be crucial downstream apoptosis-triggering lesions. DSBs are detected by ATM (ataxia telangiectasia mutated) and ATR (ataxia telangiectasia and Rad3 related) proteins, which signal downstream to CHK1, CHK2 (checkpoint kinases) and p53. p53 induces transcriptional activation of pro-apoptotic factors such as FAS, PUMA and BAX. Many tumors harbor mutations in p53. There are p53 backup systems that involve CHK1 and/or CHK2-driven E2F1 activation and p73 upregulation, which in turn transcribes BAX, PUMA and NOXA. Another trigger of apoptosis upon DNA damage is the inhibition of RNA synthesis, which leads to a decline in the level of critical gene products such as MKP1 (mitogen-activated protein kinase phosphatase). This causes sustained activation of JNK (Jun kinase) and, finally, AP-1, which stimulates death-receptor activation. DNA damage-triggered signaling and execution of apoptosis is cell-type- and genotoxin-specific depending on the p53 (p63 and p73) status, death-receptor responsiveness, MAP-kinase activation and, most importantly, DNA repair capacity. Because most clinical anti-cancer drugs target DNA, increasing knowledge on DNA damage-triggered signaling leading to cell death is expected to provide new strategies for therapeutic interventions.
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              Methods for quantifying follicular numbers within the mouse ovary.

              Accurate estimation of the number of ovarian follicles at various stages of development is an important indicator of the process of folliculogenesis in relation to the endocrine signals and paracrine/autocrine mechanisms that control the growth and maturation of the oocytes and their supporting follicular cells. There are 10-fold or greater differences in follicular numbers per ovary at similar ages and/or strains reported in earlier studies using various methods, leading to difficulties with interpretation of ovarian function in control vs experimental conditions. This study describes unbiased, assumption-free stereological methods for quantification of early and growing follicular numbers in the mouse ovary. A fractionator approach was used to sample a defined fraction of histological sections of adult wild-type ovaries. Primordial and primary follicles were counted independently with the optical and physical disector methods. The fractionator/disector methods, which are independent of follicular size or shape, gave estimations of 1930 +/- 286 (S.E.M.) and 2227 +/- 101 primordial follicles, and 137 +/- 25 and 265 +/- 32 primary follicles per ovary at 70 and 100 days of age respectively. From exact counts on serial sections, secondary and later follicular numbers at 100 days of age were estimated at 135 per ovary. Remnants of zona pellucidae (a marker of previous follicular atresia) were estimated using a fractionator/physical disector approach and were approximately 500 per ovary. The application of the quantitative methods described will facilitate an improved understanding of follicular dynamics and the factors that mediate their growth and maturation and allow for a better comparison between different studies.
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                Author and article information

                Journal
                Environmental Science and Pollution Research
                Environ Sci Pollut Res
                Springer Science and Business Media LLC
                0944-1344
                1614-7499
                February 2018
                November 19 2017
                February 2018
                : 25
                : 4
                : 3423-3434
                Article
                10.1007/s11356-017-0724-5
                1d3d48c5-38da-4e92-97e4-3a3ec94fa7cb
                © 2018

                http://www.springer.com/tdm

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