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1.
Nat Commun ; 14(1): 6695, 2023 11 06.
Article de Anglais | MEDLINE | ID: mdl-37932267

RÉSUMÉ

Mismatch Repair Deficiency (dMMR)/Microsatellite Instability (MSI) is a key biomarker in colorectal cancer (CRC). Universal screening of CRC patients for MSI status is now recommended, but contributes to increased workload for pathologists and delayed therapeutic decisions. Deep learning has the potential to ease dMMR/MSI testing and accelerate oncologist decision making in clinical practice, yet no comprehensive validation of a clinically approved tool has been conducted. We developed MSIntuit, a clinically approved artificial intelligence (AI) based pre-screening tool for MSI detection from haematoxylin-eosin (H&E) stained slides. After training on samples from The Cancer Genome Atlas (TCGA), a blind validation is performed on an independent dataset of 600 consecutive CRC patients. Inter-scanner reliability is studied by digitising each slide using two different scanners. MSIntuit yields a sensitivity of 0.96-0.98, a specificity of 0.47-0.46, and an excellent inter-scanner agreement (Cohen's κ: 0.82). By reaching high sensitivity comparable to gold standard methods while ruling out almost half of the non-MSI population, we show that MSIntuit can effectively serve as a pre-screening tool to alleviate MSI testing burden in clinical practice.


Sujet(s)
Tumeurs colorectales , Instabilité des microsatellites , Humains , Intelligence artificielle , Reproductibilité des résultats , Dépistage précoce du cancer , Tumeurs colorectales/génétique , Réparation de mésappariement de l'ADN
2.
Eur J Cancer ; 174: 90-98, 2022 10.
Article de Anglais | MEDLINE | ID: mdl-35985252

RÉSUMÉ

BACKGROUND: The need for developing new biomarkers is increasing with the emergence of many targeted therapies. Artificial Intelligence (AI) algorithms have shown great promise in the medical imaging field to build predictive models. We developed a prognostic model for solid tumour patients using AI on multimodal data. PATIENTS AND METHODS: Our retrospective study included examinations of patients with seven different cancer types performed between 2003 and 2017 in 17 different hospitals. Radiologists annotated all metastases on baseline computed tomography (CT) and ultrasound (US) images. Imaging features were extracted using AI models and used along with the patients' and treatments' metadata. A Cox regression was fitted to predict prognosis. Performance was assessed on a left-out test set with 1000 bootstraps. RESULTS: The model was built on 436 patients and tested on 196 patients (mean age 59, IQR: 51-6, 411 men out of 616 patients). On the whole, 1147 US images were annotated with lesions delineation, and 632 thorax-abdomen-pelvis CTs (total of 301,975 slices) were fully annotated with a total of 9516 lesions. The developed model reaches an average concordance index of 0.71 (0.67-0.76, 95% CI). Using the median predicted risk as a threshold value, the model is able to significantly (log-rank test P value < 0.001) isolate high-risk patients from low-risk patients (respective median OS of 11 and 31 months) with a hazard ratio of 3.5 (2.4-5.2, 95% CI). CONCLUSION: AI was able to extract prognostic features from imaging data, and along with clinical data, allows an accurate stratification of patients' prognoses.


Sujet(s)
Intelligence artificielle , Tumeurs , Marqueurs biologiques , Humains , Mâle , Adulte d'âge moyen , Tumeurs/imagerie diagnostique , Études rétrospectives , Tomodensitométrie/méthodes
3.
Nat Commun ; 12(1): 5578, 2021 09 22.
Article de Anglais | MEDLINE | ID: mdl-34552068

RÉSUMÉ

Retinoblastoma is the most frequent intraocular malignancy in children, originating from a maturing cone precursor in the developing retina. Little is known on the molecular basis underlying the biological and clinical behavior of this cancer. Here, using multi-omics data, we demonstrate the existence of two retinoblastoma subtypes. Subtype 1, of earlier onset, includes most of the heritable forms. It harbors few genetic alterations other than the initiating RB1 inactivation and corresponds to differentiated tumors expressing mature cone markers. By contrast, subtype 2 tumors harbor frequent recurrent genetic alterations including MYCN-amplification. They express markers of less differentiated cone together with neuronal/ganglion cell markers with marked inter- and intra-tumor heterogeneity. The cone dedifferentiation in subtype 2 is associated with stemness features including low immune and interferon response, E2F and MYC/MYCN activation and a higher propensity for metastasis. The recognition of these two subtypes, one maintaining a cone-differentiated state, and the other, more aggressive, associated with cone dedifferentiation and expression of neuronal markers, opens up important biological and clinical perspectives for retinoblastomas.


Sujet(s)
Cellules photoréceptrices en cône de la rétine/anatomopathologie , Cellules ganglionnaires rétiniennes/métabolisme , Tumeurs de la rétine/classification , Rétinoblastome/classification , Marqueurs biologiques tumoraux/génétique , Marqueurs biologiques tumoraux/métabolisme , Dédifférenciation cellulaire/génétique , Enfant d'âge préscolaire , Méthylation de l'ADN , Femelle , Expression des gènes , Hétérogénéité génétique , Humains , Nourrisson , Mâle , Mutation , Protéine du proto-oncogène N-Myc/génétique , Métastase tumorale , Cellules photoréceptrices en cône de la rétine/métabolisme , Cellules ganglionnaires rétiniennes/anatomopathologie , Tumeurs de la rétine/génétique , Tumeurs de la rétine/métabolisme , Tumeurs de la rétine/anatomopathologie , Rétinoblastome/génétique , Rétinoblastome/métabolisme , Rétinoblastome/anatomopathologie
4.
Nat Commun ; 12(1): 634, 2021 01 27.
Article de Anglais | MEDLINE | ID: mdl-33504775

RÉSUMÉ

The SARS-COV-2 pandemic has put pressure on intensive care units, so that identifying predictors of disease severity is a priority. We collect 58 clinical and biological variables, and chest CT scan data, from 1003 coronavirus-infected patients from two French hospitals. We train a deep learning model based on CT scans to predict severity. We then construct the multimodal AI-severity score that includes 5 clinical and biological variables (age, sex, oxygenation, urea, platelet) in addition to the deep learning model. We show that neural network analysis of CT-scans brings unique prognosis information, although it is correlated with other markers of severity (oxygenation, LDH, and CRP) explaining the measurable but limited 0.03 increase of AUC obtained when adding CT-scan information to clinical variables. Here, we show that when comparing AI-severity with 11 existing severity scores, we find significantly improved prognosis performance; AI-severity can therefore rapidly become a reference scoring approach.


Sujet(s)
COVID-19/diagnostic , COVID-19/physiopathologie , Apprentissage profond , , Tomodensitométrie/méthodes , Intelligence artificielle , COVID-19/classification , Humains , Modèles biologiques , Analyse multifactorielle , Pronostic , Radiologues , Indice de gravité de la maladie
5.
Nat Commun ; 11(1): 3877, 2020 08 03.
Article de Anglais | MEDLINE | ID: mdl-32747659

RÉSUMÉ

Deep learning methods for digital pathology analysis are an effective way to address multiple clinical questions, from diagnosis to prediction of treatment outcomes. These methods have also been used to predict gene mutations from pathology images, but no comprehensive evaluation of their potential for extracting molecular features from histology slides has yet been performed. We show that HE2RNA, a model based on the integration of multiple data modes, can be trained to systematically predict RNA-Seq profiles from whole-slide images alone, without expert annotation. Through its interpretable design, HE2RNA provides virtual spatialization of gene expression, as validated by CD3- and CD20-staining on an independent dataset. The transcriptomic representation learned by HE2RNA can also be transferred on other datasets, even of small size, to increase prediction performance for specific molecular phenotypes. We illustrate the use of this approach in clinical diagnosis purposes such as the identification of tumors with microsatellite instability.


Sujet(s)
Biologie informatique/méthodes , Apprentissage profond , Régulation de l'expression des gènes tumoraux , Traitement d'image par ordinateur/méthodes , Tumeurs/génétique , RNA-Seq/méthodes , Algorithmes , Analyse de profil d'expression de gènes/méthodes , Humains , Instabilité des microsatellites , Modèles génétiques , Tumeurs/diagnostic , Tumeurs/métabolisme
6.
Nat Med ; 25(10): 1519-1525, 2019 10.
Article de Anglais | MEDLINE | ID: mdl-31591589

RÉSUMÉ

Malignant mesothelioma (MM) is an aggressive cancer primarily diagnosed on the basis of histological criteria1. The 2015 World Health Organization classification subdivides mesothelioma tumors into three histological types: epithelioid, biphasic and sarcomatoid MM. MM is a highly complex and heterogeneous disease, rendering its diagnosis and histological typing difficult and leading to suboptimal patient care and decisions regarding treatment modalities2. Here we have developed a new approach-based on deep convolutional neural networks-called MesoNet to accurately predict the overall survival of mesothelioma patients from whole-slide digitized images, without any pathologist-provided locally annotated regions. We validated MesoNet on both an internal validation cohort from the French MESOBANK and an independent cohort from The Cancer Genome Atlas (TCGA). We also demonstrated that the model was more accurate in predicting patient survival than using current pathology practices. Furthermore, unlike classical black-box deep learning methods, MesoNet identified regions contributing to patient outcome prediction. Strikingly, we found that these regions are mainly located in the stroma and are histological features associated with inflammation, cellular diversity and vacuolization. These findings suggest that deep learning models can identify new features predictive of patient survival and potentially lead to new biomarker discoveries.


Sujet(s)
Tumeurs du poumon/diagnostic , Tumeurs du poumon/anatomopathologie , Mésothéliome/diagnostic , Mésothéliome/anatomopathologie , Pronostic , Apprentissage profond , Femelle , Humains , Tumeurs du poumon/classification , Mâle , Mésothéliome/classification , Mésothéliome malin , Grading des tumeurs ,
7.
PLoS Genet ; 12(2): e1005888, 2016 Feb.
Article de Anglais | MEDLINE | ID: mdl-26925970

RÉSUMÉ

Retinoblastoma (Rb), the most common pediatric intraocular neoplasm, results from inactivation of both alleles of the RB1 tumor suppressor gene. The second allele is most commonly lost, as demonstrated by loss of heterozygosity studies. RB1 germline carriers usually develop bilateral tumors, but some Rb families display low penetrance and variable expressivity. In order to decipher the underlying mechanisms, 23 unrelated low penetrance pedigrees segregating the common c.1981C>T/p.Arg661Trp mutation and other low penetrance mutations were studied. In families segregating the c.1981C>T mutation, we demonstrated, for the first time, a correlation between the gender of the transmitting carrier and penetrance, as evidenced by Fisher's exact test: the probability of being unaffected is 90.3% and 32.5% when the mutation is inherited from the mother and the father, respectively (p-value = 7.10(-7). Interestingly, a similar correlation was observed in families segregating other low penetrance alleles. Consequently, we investigated the putative involvement of an imprinted, modifier gene in low penetrance Rb. We first ruled out a MED4-driven mechanism by MED4 methylation and expression analyses. We then focused on the differentially methylated CpG85 island located in intron 2 of RB1 and showing parent-of-origin-specific DNA methylation. This differential methylation promotes expression of the maternal c.1981C>T allele. We propose that the maternally inherited c.1981C>T/p.Arg661Trp allele retains sufficient tumor suppressor activity to prevent retinoblastoma development. In contrast, when the mutation is paternally transmitted, the low residual activity would mimic a null mutation and subsequently lead to retinoblastoma. This implies that the c.1981C>T mutation is not deleterious per se but needs to be destabilized in order to reach pRb haploinsufficiency and initiate tumorigenesis. We suggest that this phenomenon might be a general mechanism to explain phenotypic differences in low penetrance Rb families.


Sujet(s)
Mutation , Tumeurs de la rétine/génétique , Protéine du rétinoblastome/génétique , Rétinoblastome/génétique , Ilots CpG , Méthylation de l'ADN , Femelle , Hétérozygote , Humains , Mâle , Complexe médiateur/génétique , Complexe médiateur/métabolisme , Pedigree , Pénétrance , Phénotype , Tumeurs de la rétine/anatomopathologie , Rétinoblastome/anatomopathologie , Protéine du rétinoblastome/métabolisme
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