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1.
Artículo en Inglés | MEDLINE | ID: mdl-39225840

RESUMEN

PURPOSE: Identification of mature sperm at microdissection testicular sperm extraction (mTESE) is a crucial step of sperm retrieval to help patients with non-obstructive azoospermia (NOA) proceed to intracytoplasmic sperm injection. Touch print smear (TPS) cytology allows immediate interpretation and prompt sperm identification intraoperatively. In this study, we leverage machine learning (ML) to facilitate TPS reading and conquer the learning curve for new operators. MATERIALS AND METHODS: One hundred seventy-six microscopic TPS images from the testicular specimen of patients with azoospermia at Taipei Veterans General Hospital were retrospectively collected, including categories of Sertoli cell, primary spermatocytes, round spermatids, elongated spermatids, immature sperm, and mature sperm. Among them, 118 images were assigned as the training set and 29 images as the validation set. RetinaNet (Lin et al. in IEEE Trans Pattern Anal Mach Intell. 42:318-327, 2020), a one-stage detection framework, was adopted for cell detection. The performance was evaluated at the cell level with average precision (AP) and recall, and the precision-recall (PR) curve was displayed among an independent testing set that contains 29 images that aim to assess the model. RESULTS: The training set consisted of 4772 annotated cells, including 1782 Sertoli cells, 314 primary spermatocytes, 443 round spermatids, 279 elongated spermatids, 504 immature sperm, and 1450 mature sperm. This study demonstrated the performance of each category and the overall AP and recall on the validation set, which were 80.47% and 96.69%. The overall AP and recall were 79.48% and 93.63% on the testing set, while increased to 85.29% and 93.80% once the post-meiotic cells were merged into one category. CONCLUSIONS: This study proposed an innovative approach that leveraged ML methods to facilitate the diagnosis of spermatogenesis at mTESE for patients with NOA. With the assistance of ML techniques, surgeons could determine the stages of spermatogenesis and provide timely histopathological diagnosis for infertile males.

2.
Med Phys ; 49(7): 4293-4304, 2022 Jul.
Artículo en Inglés | MEDLINE | ID: mdl-35488864

RESUMEN

BACKGROUND: Dose deposition characteristics of proton radiation can be advantageous over photons. Proton treatment planning, however, poses additional challenges for the planners. Proton therapy is usually delivered with only a small number of beam angles, and the quality of a proton treatment plan is largely determined by the beam angles employed. Finding the optimal beam angles for a proton treatment plan requires time and experience, motivating the investigation of automatic beam angle selection methods. PURPOSE: A deep learning-based approach to automatic beam angle selection is proposed for the proton pencil-beam scanning treatment planning of liver lesions. METHODS: We cast beam-angle selection as a multi-label classification problem. To account for angular boundary discontinuity, the underlying convolution neural network is trained with the proposed Circular Earth Mover's Distance-based regularization and multi-label circular-smooth label technique. Furthermore, an analytical algorithm emulating proton treatment planners' clinical practice is employed in post-processing to improve the output of the model. Forty-nine patients that received proton liver treatments between 2017 and 2020 were randomly divided into training (n = 31), validation (n = 7), and test sets (n = 11). AI-selected beam angles were compared with those angles selected by human planners, and the dosimetric outcome was investigated by creating plans using knowledge-based treatment planning. RESULTS: For 7 of the 11 cases in the test set, AI-selected beam angles agreed with those chosen by human planners to within 20° (median angle difference = 10°; mean = 18.6°). Moreover, out of the total 22 beam angles predicted by the model, 15 (68%) were within 10° of the human-selected angles. The high correlation in beam angles resulted in comparable dosimetric statistics between proton treatment plans generated using AI- and human-selected angles. For the cases with beam angle differences exceeding 20°, the dosimetric analysis showed similar plan quality although with different emphases on organ-at-risk sparing. CONCLUSIONS: This pilot study demonstrated the feasibility of a novel deep learning-based beam angle selection technique. Testing on liver cancer patients showed that the resulting plans were clinically viable with comparable dosimetric quality to those using human-selected beam angles. In tandem with auto-contouring and knowledge-based treatment planning tools, the proposed model could represent a pathway for nearly fully automated treatment planning in proton therapy.


Asunto(s)
Aprendizaje Profundo , Hígado , Terapia de Protones , Radioterapia de Intensidad Modulada , Humanos , Proyectos Piloto , Terapia de Protones/métodos , Protones , Dosificación Radioterapéutica , Planificación de la Radioterapia Asistida por Computador/métodos , Radioterapia de Intensidad Modulada/métodos
3.
Biology (Basel) ; 11(4)2022 Mar 23.
Artículo en Inglés | MEDLINE | ID: mdl-35453690

RESUMEN

Early and accurate prediction of endotracheal tube (ETT) location is pivotal for critically ill patients. Automatic and timely detection of faulty ETT locations from chest X-ray images may avert patients' morbidity and mortality. Therefore, we designed convolutional neural network (CNN)-based algorithms to evaluate ETT position appropriateness relative to four detected key points, including tracheal tube end, carina, and left/right clavicular heads on chest radiographs. We estimated distances from the tube end to tracheal carina and the midpoint of clavicular heads. A DenseNet121 encoder transformed images into embedding features, and a CNN-based decoder generated the probability distributions. Based on four sets of tube-to-carina distance-dependent parameters (i.e., (i) 30-70 mm, (ii) 30-60 mm, (iii) 20-60 mm, and (iv) 20-55 mm), corresponding models were generated, and their accuracy was evaluated through the predicted L1 distance to ground-truth coordinates. Based on tube-to-carina and tube-to-clavicle distances, the highest sensitivity, and specificity of 92.85% and 84.62% respectively, were revealed for 20-55 mm. This implies that tube-to-carina distance between 20 and 55 mm is optimal for an AI-based key point appropriateness detection system and is empirically comparable to physicians' consensus.

4.
J Biomed Mater Res B Appl Biomater ; 108(4): 1592-1602, 2020 05.
Artículo en Inglés | MEDLINE | ID: mdl-31643135

RESUMEN

More and more scholars regard the lesion of liver cirrhosis as a series of progressive clinical stages. Besides, liver cirrhosis is a late stage of scarring (fibrosis) of the liver, and has long been a common cause of death for the global adult population, thus, the treatment of liver cirrhosis is a key point investigated in the biomedical field. Here, we propose a novel hypothesis; if decellularized liver matrix (DLM) is possible injected into the injurant-induced fiberized liver via the hepatic portal vein to thoroughly repair the liver, it may be an effective therapeutic method for liver fibrosis or even liver cirrhosis. This study mixed rat DLM with gelatin-hydroxyphenylpropionic acid (Glt-HPA) to form a three-dimensional structure to simulate the in vivo liver environment, and cultured the primary rat hepatocytes in it. Afterward, the hepatocytes were treated using D-galactosamine (GaIN), CHCl3 , and CCl4 -containing medium to simulate the toxin-mediated liver fibrosis in vitro. Finally, they were cultured in a DLM-containing medium to observe the viability and functions of the damaged hepatocytes, and the hypothesis of this research was proved, meaning that Glt-HPA-DLM acting on damaged hepatocytes may repair them. Results have shown that Glt-HPA-DLM was effective for hepatocytes culture and repaired injured hepatocytes from GaIN, CHCl3 , and CCl4 (albumin synthesis was increased by 219, 108, and 12%, respectively, whereas relative lactate dehydrogenase activity was reduced by 38, 68, and 67%, after 5 days of culture, separately). This research shows promising effects against hepatic fibrosis and may have potential for liver cirrhosis in vivo.


Asunto(s)
Matriz Extracelular/química , Hepatocitos/metabolismo , Cirrosis Hepática , Hígado/química , Animales , Supervivencia Celular , Hígado/metabolismo , Cirrosis Hepática/metabolismo , Cirrosis Hepática/patología , Cirrosis Hepática/terapia , Masculino , Ratas , Ratas Sprague-Dawley
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