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1.
Pediatr Dev Pathol ; 25(3): 354, 2022.
Artigo em Inglês | MEDLINE | ID: mdl-34886723
2.
Pediatr Dev Pathol ; 24(4): 299-308, 2021.
Artigo em Inglês | MEDLINE | ID: mdl-33734914

RESUMO

Fragile perinatal and fetal brains are the rule rather than the exception for developmental neuropathologists. Retrieving the fresh brain from the skull and examining early fetal, macerated or severely hydrocephalic brains after fixation can be a challenge. Textbooks on neurodevelopmental pathology mention these challenges to macroscopic examination of the developing central nervous system only in passing, but many perinatal pathologists recognize this diagnostic problem. We reviewed protocols and publications on the removal, fixation, slicing and sampling of these fetal- and perinatal brains. In addition, we describe a technique to facilitate the removal of severely hydrocephalic brains with very thin cerebral walls from the skull by replacing the intraventricular fluid with agar in-situ. Furthermore, we present a method for post-fixation pre-embedding in agar to facilitate slicing, macroscopic examination and sampling of fragile and macerated brains.


Assuntos
Ágar , Autopsia/métodos , Encéfalo/patologia , Feto/patologia , Neuropatologia/métodos , Manejo de Espécimes/métodos , Preservação de Tecido/métodos , Encéfalo/embriologia , Doenças Fetais/diagnóstico , Doenças Fetais/patologia , Feto/embriologia , Humanos
3.
JAMA ; 318(22): 2199-2210, 2017 12 12.
Artigo em Inglês | MEDLINE | ID: mdl-29234806

RESUMO

Importance: Application of deep learning algorithms to whole-slide pathology images can potentially improve diagnostic accuracy and efficiency. Objective: Assess the performance of automated deep learning algorithms at detecting metastases in hematoxylin and eosin-stained tissue sections of lymph nodes of women with breast cancer and compare it with pathologists' diagnoses in a diagnostic setting. Design, Setting, and Participants: Researcher challenge competition (CAMELYON16) to develop automated solutions for detecting lymph node metastases (November 2015-November 2016). A training data set of whole-slide images from 2 centers in the Netherlands with (n = 110) and without (n = 160) nodal metastases verified by immunohistochemical staining were provided to challenge participants to build algorithms. Algorithm performance was evaluated in an independent test set of 129 whole-slide images (49 with and 80 without metastases). The same test set of corresponding glass slides was also evaluated by a panel of 11 pathologists with time constraint (WTC) from the Netherlands to ascertain likelihood of nodal metastases for each slide in a flexible 2-hour session, simulating routine pathology workflow, and by 1 pathologist without time constraint (WOTC). Exposures: Deep learning algorithms submitted as part of a challenge competition or pathologist interpretation. Main Outcomes and Measures: The presence of specific metastatic foci and the absence vs presence of lymph node metastasis in a slide or image using receiver operating characteristic curve analysis. The 11 pathologists participating in the simulation exercise rated their diagnostic confidence as definitely normal, probably normal, equivocal, probably tumor, or definitely tumor. Results: The area under the receiver operating characteristic curve (AUC) for the algorithms ranged from 0.556 to 0.994. The top-performing algorithm achieved a lesion-level, true-positive fraction comparable with that of the pathologist WOTC (72.4% [95% CI, 64.3%-80.4%]) at a mean of 0.0125 false-positives per normal whole-slide image. For the whole-slide image classification task, the best algorithm (AUC, 0.994 [95% CI, 0.983-0.999]) performed significantly better than the pathologists WTC in a diagnostic simulation (mean AUC, 0.810 [range, 0.738-0.884]; P < .001). The top 5 algorithms had a mean AUC that was comparable with the pathologist interpreting the slides in the absence of time constraints (mean AUC, 0.960 [range, 0.923-0.994] for the top 5 algorithms vs 0.966 [95% CI, 0.927-0.998] for the pathologist WOTC). Conclusions and Relevance: In the setting of a challenge competition, some deep learning algorithms achieved better diagnostic performance than a panel of 11 pathologists participating in a simulation exercise designed to mimic routine pathology workflow; algorithm performance was comparable with an expert pathologist interpreting whole-slide images without time constraints. Whether this approach has clinical utility will require evaluation in a clinical setting.


Assuntos
Neoplasias da Mama/patologia , Metástase Linfática/diagnóstico , Aprendizado de Máquina , Patologistas , Algoritmos , Feminino , Humanos , Metástase Linfática/patologia , Patologia Clínica , Curva ROC
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