14 research outputs found
Abundances of the elements in the solar system
A review of the abundances and condensation temperatures of the elements and
their nuclides in the solar nebula and in chondritic meteorites. Abundances of
the elements in some neighboring stars are also discussed.Comment: 42 pages, 11 tables, 8 figures, chapter, In Landolt- B\"ornstein, New
Series, Vol. VI/4B, Chap. 4.4, J.E. Tr\"umper (ed.), Berlin, Heidelberg, New
York: Springer-Verlag, p. 560-63
Deep learning-based phenotyping reclassifies combined hepatocellular-cholangiocarcinoma.
Primary liver cancer arises either from hepatocytic or biliary lineage cells, giving rise to hepatocellular carcinoma (HCC) or intrahepatic cholangiocarcinoma (ICCA). Combined hepatocellular- cholangiocarcinomas (cHCC-CCA) exhibit equivocal or mixed features of both, causing diagnostic uncertainty and difficulty in determining proper management. Here, we perform a comprehensive deep learning-based phenotyping of multiple cohorts of patients. We show that deep learning can reproduce the diagnosis of HCC vs. CCA with a high performance. We analyze a series of 405 cHCC-CCA patients and demonstrate that the model can reclassify the tumors as HCC or ICCA, and that the predictions are consistent with clinical outcomes, genetic alterations and in situ spatial gene expression profiling. This type of approach could improve treatment decisions and ultimately clinical outcome for patients with rare and biphenotypic cancers such as cHCC-CCA
Sloan Digital Sky Survey IV: mapping the Milky Way, nearby galaxies, and the distant universe
We describe the Sloan Digital Sky Survey IV (SDSS-IV), a project encompassing three major spectroscopic programs. The Apache Point Observatory Galactic Evolution Experiment 2 (APOGEE-2) is observing hundreds of thousands of Milky Way stars at high resolution and high signal-to-noise ratios in the near-infrared. The Mapping Nearby Galaxies at Apache Point Observatory (MaNGA) survey is obtaining spatially resolved spectroscopy for thousands of nearby galaxies (median ). The extended Baryon Oscillation Spectroscopic Survey (eBOSS) is mapping the galaxy, quasar, and neutral gas distributions between and 3.5 to constrain cosmology using baryon acoustic oscillations, redshift space distortions, and the shape of the power spectrum. Within eBOSS, we are conducting two major subprograms: the SPectroscopic IDentification of eROSITA Sources (SPIDERS), investigating X-ray AGNs and galaxies in X-ray clusters, and the Time Domain Spectroscopic Survey (TDSS), obtaining spectra of variable sources. All programs use the 2.5 m Sloan Foundation Telescope at the Apache Point Observatory; observations there began in Summer 2014. APOGEE-2 also operates a second near-infrared spectrograph at the 2.5 m du Pont Telescope at Las Campanas Observatory, with observations beginning in early 2017. Observations at both facilities are scheduled to continue through 2020. In keeping with previous SDSS policy, SDSS-IV provides regularly scheduled public data releases; the first one, Data Release 13, was made available in 2016 July
Sloan Digital Sky Survey IV: mapping the Milky Way, nearby galaxies, and the distant universe
We describe the Sloan Digital Sky Survey IV (SDSS-IV), a project encompassing three major spectroscopic programs. The Apache Point Observatory Galactic Evolution Experiment 2 (APOGEE-2) is observing hundreds of thousands of Milky Way stars at high resolution and high signal-to-noise ratios in the near-infrared. The Mapping Nearby Galaxies at Apache Point Observatory (MaNGA) survey is obtaining spatially resolved spectroscopy for thousands of nearby galaxies (median ). The extended Baryon Oscillation Spectroscopic Survey (eBOSS) is mapping the galaxy, quasar, and neutral gas distributions between and 3.5 to constrain cosmology using baryon acoustic oscillations, redshift space distortions, and the shape of the power spectrum. Within eBOSS, we are conducting two major subprograms: the SPectroscopic IDentification of eROSITA Sources (SPIDERS), investigating X-ray AGNs and galaxies in X-ray clusters, and the Time Domain Spectroscopic Survey (TDSS), obtaining spectra of variable sources. All programs use the 2.5 m Sloan Foundation Telescope at the Apache Point Observatory; observations there began in Summer 2014. APOGEE-2 also operates a second near-infrared spectrograph at the 2.5 m du Pont Telescope at Las Campanas Observatory, with observations beginning in early 2017. Observations at both facilities are scheduled to continue through 2020. In keeping with previous SDSS policy, SDSS-IV provides regularly scheduled public data releases; the first one, Data Release 13, was made available in 2016 July
Data from: GTC FOLLOW-UP OBSERVATIONS OF VERY METAL-POOR STAR CANDIDATES FROM DESI
Data for plots in the paper. The dat folders include the spectra shown in Figures 1-2-3, and the file osiris/allende2023_desi_osiris_carbon.mrt gives the data points in Figure 4. The observed stellar spectra come from the Dark Energy Spectroscopic Instrument and the OSIRIS instrument on the 10.4-m Gran Telescopio Canarias. All data are in text files, in Machine Readable Table (MRT) format. See the included Readme.txt file for details
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Hepatobiliary malignancies have distinct peripheral myeloid-derived suppressor cell signatures and tumor myeloid cell profiles
Artificial intelligence-based pathology as a biomarker of sensitivity to atezolizumab-bevacizumab in patients with hepatocellular carcinoma: a multicentre retrospective study.
Clinical benefits of atezolizumab plus bevacizumab (atezolizumab-bevacizumab) are observed only in a subset of patients with hepatocellular carcinoma and the development of biomarkers is needed to improve therapeutic strategies. The atezolizumab-bevacizumab response signature (ABRS), assessed by molecular biology profiling techniques, has been shown to be associated with progression-free survival after treatment initiation. The primary objective of our study was to develop an artificial intelligence (AI) model able to estimate ABRS expression directly from histological slides, and to evaluate if model predictions were associated with progression-free survival.
In this multicentre retrospective study, we developed a model (ABRS-prediction; ABRS-P), which was derived from the previously published clustering-constrained attention multiple instance learning (or CLAM) pipeline. We trained the model fit for regression analysis using a multicentre dataset from The Cancer Genome Atlas (patients treated by surgical resection, n=336). The ABRS-P model was externally validated on two independent series of samples from patients with hepatocellular carcinoma (a surgical resection series, n=225; and a biopsy series, n=157). The predictive value of the model was further tested in a series of biopsy samples from a multicentre cohort of patients with hepatocellular carcinoma treated with atezolizumab-bevacizumab (n=122). All samples in the study were from adults (aged â„18 years). The validation sets were sampled between Jan 1, 2008, to Jan 1, 2023. For the multicentre validation set, the primary objective was to assess the association of high versus low ABRS-P values, defined relative to cross-validation median split thresholds in the first biopsy series, with progression-free survival after treatment initiation. Finally, we performed spatial transcriptomics and matched prediction heatmaps with in situ expression profiles.
Of the 840 patients sampled, 641 (76%) were male and 199 (24%) were female. Across the development and validation datasets, hepatocellular carcinoma risk factors included alcohol intake, hepatitis B and C virus infections, and non-alcoholic steatohepatitis. Using cross-validation in the development series, the mean Pearson's correlation between ABRS-P values and ABRS score (mean expression of ABRS genes) was r=0·62 (SD 0·09; mean p<0·0001, SD<0·0001). The ABRS-P generalised well on the external validation series (surgical resection series, r=0·60 [95% CI 0·51-0·68], p<0·0001; biopsy series, r=0·53 [0·40-0·63], p<0·0001). In the 122 patients treated with atezolizumab-bevacizumab, those with ABRS-P-high tumours (n=74) showed significantly longer median progression-free survival than those with ABRS-P-low tumours (n=48) after treatment initiation (12 months [95% CI 7-not reached] vs 7 months [4-9]; p=0·014). Spatial transcriptomics showed significantly higher ABRS score, along with upregulation of various other immune effectors, in tumour areas with high ABRS-P values versus areas with low ABRS-P values.
Our study indicates that AI applied on hepatocellular carcinoma digital slides is able to serve as a biomarker for progression-free survival in patients treated with atezolizumab-bevacizumab. This approach could be used in the development of inexpensive and fast biomarkers for targeted therapies. The combination of AI heatmaps with spatial transcriptomics provides insight on the molecular features associated with predictions. This methodology could be applied to other cancers or diseases and improve understanding of the biological mechanisms that drive responses to treatments.
Institut National du Cancer, Fondation ARC, China Scholarship Council, Ligue Contre le Cancer du Val de Marne, Fondation de l'Avenir, Ipsen, and Fondation Bristol Myers Squibb Pour la Recherche en Immuno-Oncologie
Artificial intelligence-based pathology as a biomarker of sensitivity to atezolizumabâbevacizumab in patients with hepatocellular carcinoma: a multicentre retrospective study
Background Clinical benefits of atezolizumab plus bevacizumab (atezolizumabâbevacizumab) are observed only in a
subset of patients with hepatocellular carcinoma and the development of biomarkers is needed to improve therapeutic
strategies. The atezolizumabâbevacizumab response signature (ABRS), assessed by molecular biology profiling
techniques, has been shown to be associated with progression-free survival after treatment initiation. The primary
objective of our study was to develop an artificial intelligence (AI) model able to estimate ABRS expression directly
from histological slides, and to evaluate if model predictions were associated with progression-free survival.
Methods In this multicentre retrospective study, we developed a model (ABRS-prediction; ABRS-P), which was
derived from the previously published clustering-constrained attention multiple instance learning (or CLAM)
pipeline. We trained the model fit for regression analysis using a multicentre dataset from The Cancer Genome Atlas
(patients treated by surgical resection, n=336). The ABRS-P model was externally validated on two independent series
of samples from patients with hepatocellular carcinoma (a surgical resection series, n=225; and a biopsy series, n=157).
The predictive value of the model was further tested in a series of biopsy samples from a multicentre cohort of
patients with hepatocellular carcinoma treated with atezolizumabâbevacizumab (n=122). All samples in the study
were from adults (aged â„18 years). The validation sets were sampled between Jan 1, 2008, to Jan 1, 2023. For the
multicentre validation set, the primary objective was to assess the association of high versus low ABRS-P values,
defined relative to cross-validation median split thresholds in the first biopsy series, with progression-free survival
after treatment initiation. Additionally, we performed spatial transcriptomics and matched prediction heatmaps with
in situ expression profiles.
Findings Of the 840 patients sampled, 641 (76%) were male and 199 (24%) were female. Across the development and
validation datasets, hepatocellular carcinoma risk factors included alcohol intake, hepatitis B and C virus infections,
and non-alcoholic steatohepatitis. Using cross-validation in the development series, the mean Pearsonâs correlation
between ABRS-P values and ABRS score (mean expression of ABRS genes) was 0·62 (SD 0·09; mean p<0·0001,
SD<0·0001). The ABRS-P generalised well on the external validation series (surgical resection series, r=0·60 [95% CI
0·51â0·68], p<0·0001; biopsy series, r=0·53 [0·40â0·63], p<0·0001). In the 122 patients treated with
atezolizumabâbevacizumab, those with ABRS-P-high tumours (n=74) showed significantly longer median
progression-free survival than those with ABRS-P-low tumours (n=48) after treatment initiation (12 months [95% CI
7ânot reached] vs 7 months [4â9]; p=0·014). Spatial transcriptomics showed significantly higher ABRS score, along
with upregulation of various other immune effectors, in tumour areas with high ABRS-P values versus
areas with low ABRS-P values.
Interpretation Our study indicates that AI applied on hepatocellular carcinoma digital slides is able to serve as a
biomarker for progression-free survival in patients treated with atezolizumabâbevacizumab. This approach could be
used in the development of inexpensive and fast biomarkers for targeted therapies. The combination of AI heatmaps
with spatial transcriptomics provides insight on the molecular features associated with predictions. This methodology
could be applied to other cancers or diseases and improve understanding of the biological mechanisms that drive
responses to treatments