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1.
Hepatology ; 72(6): 2000-2013, 2020 12.
Artículo en Inglés | MEDLINE | ID: mdl-32108950

RESUMEN

BACKGROUND AND AIMS: Standardized and robust risk-stratification systems for patients with hepatocellular carcinoma (HCC) are required to improve therapeutic strategies and investigate the benefits of adjuvant systemic therapies after curative resection/ablation. APPROACH AND RESULTS: In this study, we used two deep-learning algorithms based on whole-slide digitized histological slides (whole-slide imaging; WSI) to build models for predicting survival of patients with HCC treated by surgical resection. Two independent series were investigated: a discovery set (Henri Mondor Hospital, n = 194) used to develop our algorithms and an independent validation set (The Cancer Genome Atlas [TCGA], n = 328). WSIs were first divided into small squares ("tiles"), and features were extracted with a pretrained convolutional neural network (preprocessing step). The first deep-learning-based algorithm ("SCHMOWDER") uses an attention mechanism on tumoral areas annotated by a pathologist whereas the second ("CHOWDER") does not require human expertise. In the discovery set, c-indices for survival prediction of SCHMOWDER and CHOWDER reached 0.78 and 0.75, respectively. Both models outperformed a composite score incorporating all baseline variables associated with survival. Prognostic value of the models was further validated in the TCGA data set, and, as observed in the discovery series, both models had a higher discriminatory power than a score combining all baseline variables associated with survival. Pathological review showed that the tumoral areas most predictive of poor survival were characterized by vascular spaces, the macrotrabecular architectural pattern, and a lack of immune infiltration. CONCLUSIONS: This study shows that artificial intelligence can help refine the prediction of HCC prognosis. It highlights the importance of pathologist/machine interactions for the construction of deep-learning algorithms that benefit from expert knowledge and allow a biological understanding of their output.


Asunto(s)
Carcinoma Hepatocelular/mortalidad , Aprendizaje Profundo , Hepatectomía/métodos , Neoplasias Hepáticas/mortalidad , Anciano , Carcinoma Hepatocelular/patología , Carcinoma Hepatocelular/cirugía , Estudios de Factibilidad , Femenino , Estudios de Seguimiento , Humanos , Hígado/patología , Hígado/cirugía , Neoplasias Hepáticas/patología , Neoplasias Hepáticas/cirugía , Masculino , Persona de Mediana Edad , Pronóstico , Medición de Riesgo/métodos , Análisis de Supervivencia , Resultado del Tratamiento
2.
Nat Commun ; 11(1): 3877, 2020 08 03.
Artículo en Inglés | MEDLINE | ID: mdl-32747659

RESUMEN

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.


Asunto(s)
Biología Computacional/métodos , Aprendizaje Profundo , Regulación Neoplásica de la Expresión Génica , Procesamiento de Imagen Asistido por Computador/métodos , Neoplasias/genética , RNA-Seq/métodos , Algoritmos , Perfilación de la Expresión Génica/métodos , Humanos , Inestabilidad de Microsatélites , Modelos Genéticos , Neoplasias/diagnóstico , Neoplasias/metabolismo
3.
Nat Med ; 25(10): 1519-1525, 2019 10.
Artículo en Inglés | MEDLINE | ID: mdl-31591589

RESUMEN

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.


Asunto(s)
Neoplasias Pulmonares/diagnóstico , Neoplasias Pulmonares/patología , Mesotelioma/diagnóstico , Mesotelioma/patología , Pronóstico , Aprendizaje Profundo , Femenino , Humanos , Neoplasias Pulmonares/clasificación , Masculino , Mesotelioma/clasificación , Mesotelioma Maligno , Clasificación del Tumor , Redes Neurales de la Computación
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