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1.
Rev Med Liege ; 78(7-8): 431-435, 2023 Jul.
Article in French | MEDLINE | ID: mdl-37560956

ABSTRACT

An accessory and cavitated uterine mass (ACUM) is a rare anomaly with an embryological origin of dysfunctionning female gubernaculum. It is an accessory mass internally lined with normal endometrium, separated from the uterine cavity and located near the insertion of the round ligament. ACUM's clinical manifestations are severe dysmenorrhea and/or chronic pelvic pain. It is a relatively unknown condition, which makes its diagnosis complicated and suggests a large differential diagnosis. We report the case of a 31-year-old female presenting with pelvic chronic pain and crippling dysmenorrhea. The initial work-up consists of a magnetic resonance imaging showing an interstitial lesion possibly corresponding to an ACUM. This supposition was then confirmed by histopathology.


La masse utérine cavitaire accessoire (MUCA) est une anomalie rare dont l'origine est embryologique et serait liée à un dysfonctionnement du gubernaculum féminin. Il s'agit d'une masse accessoire non communicante située à proximité de l'insertion du ligament rond, tapissée par un endomètre normal. La MUCA se manifeste par une dysménorrhée sévère et/ou des douleurs pelviennes chroniques. Il s'agit d'une pathologie relativement méconnue, ce qui rend son diagnostic difficile, et qui suggère un large diagnostic différentiel. Nous rapportons ici le cas d'une femme de 31 ans présentant des douleurs pelviennes chroniques et une dysménorrhée invalidante. La mise au point initiale par résonance magnétique pelvienne a montré la présence d'une lésion interstitielle pouvant correspondre à une MUCA, qui a ensuite été confirmée à l'examen histopathologique.


Subject(s)
Dysmenorrhea , Pelvic Pain , Female , Humans , Adult , Dysmenorrhea/complications , Dysmenorrhea/pathology , Pelvic Pain/etiology , Pelvic Pain/pathology , Uterus/diagnostic imaging , Diagnosis, Differential , Pelvis
2.
Sci Rep ; 13(1): 7198, 2023 05 03.
Article in English | MEDLINE | ID: mdl-37137947

ABSTRACT

The paper deals with the evaluation of the performance of an existing and previously validated CT based radiomic signature, developed in oropharyngeal cancer to predict human papillomavirus (HPV) status, in the context of anal cancer. For the validation in anal cancer, a dataset of 59 patients coming from two different centers was collected. The primary endpoint was HPV status according to p16 immunohistochemistry. Predefined statistical tests were performed to evaluate the performance of the model. The AUC obtained here in anal cancer is 0.68 [95% CI (0.32-1.00)] with F1 score of 0.78. This signature is TRIPOD level 4 (57%) with an RQS of 61%. This study provides proof of concept that this radiomic signature has the potential to identify a clinically relevant molecular phenotype (i.e., the HPV-ness) across multiple cancers and demonstrates potential for this radiomic signature as a CT imaging biomarker of p16 status.


Subject(s)
Anus Neoplasms , Oropharyngeal Neoplasms , Papillomavirus Infections , Humans , Human Papillomavirus Viruses , Prognosis , Anus Neoplasms/diagnostic imaging , Tomography, X-Ray Computed/methods , Retrospective Studies
3.
ERJ Open Res ; 8(2)2022 Apr.
Article in English | MEDLINE | ID: mdl-35509437

ABSTRACT

Purpose: In this study, we propose an artificial intelligence (AI) framework based on three-dimensional convolutional neural networks to classify computed tomography (CT) scans of patients with coronavirus disease 2019 (COVID-19), influenza/community-acquired pneumonia (CAP), and no infection, after automatic segmentation of the lungs and lung abnormalities. Methods: The AI classification model is based on inflated three-dimensional Inception architecture and was trained and validated on retrospective data of CT images of 667 adult patients (no infection n=188, COVID-19 n=230, influenza/CAP n=249) and 210 adult patients (no infection n=70, COVID-19 n=70, influenza/CAP n=70), respectively. The model's performance was independently evaluated on an internal test set of 273 adult patients (no infection n=55, COVID-19 n= 94, influenza/CAP n=124) and an external validation set from a different centre (305 adult patients: COVID-19 n=169, no infection n=76, influenza/CAP n=60). Results: The model showed excellent performance in the external validation set with area under the curve of 0.90, 0.92 and 0.92 for COVID-19, influenza/CAP and no infection, respectively. The selection of the input slices based on automatic segmentation of the abnormalities in the lung reduces analysis time (56 s per scan) and computational burden of the model. The Transparent Reporting of a Multivariable Prediction Model for Individual Prognosis or Diagnosis (TRIPOD) score of the proposed model is 47% (15 out of 32 TRIPOD items). Conclusion: This AI solution provides rapid and accurate diagnosis in patients suspected of COVID-19 infection and influenza.

4.
Med Res Rev ; 42(1): 426-440, 2022 01.
Article in English | MEDLINE | ID: mdl-34309893

ABSTRACT

Radiomics is the quantitative analysis of standard-of-care medical imaging; the information obtained can be applied within clinical decision support systems to create diagnostic, prognostic, and/or predictive models. Radiomics analysis can be performed by extracting hand-crafted radiomics features or via deep learning algorithms. Radiomics has evolved tremendously in the last decade, becoming a bridge between imaging and precision medicine. Radiomics exploits sophisticated image analysis tools coupled with statistical elaboration to extract the wealth of information hidden inside medical images, such as computed tomography (CT), magnetic resonance (MR), and/or Positron emission tomography (PET) scans, routinely performed in the everyday clinical practice. Many efforts have been devoted in recent years to the standardization and validation of radiomics approaches, to demonstrate their usefulness and robustness beyond any reasonable doubts. However, the booming of publications and commercial applications of radiomics approaches warrant caution and proper understanding of all the factors involved to avoid "scientific pollution" and overly enthusiastic claims by researchers and clinicians alike. For these reasons the present review aims to be a guidebook of sorts, describing the process of radiomics, its pitfalls, challenges, and opportunities, along with its ability to improve clinical decision-making, from oncology and respiratory medicine to pharmacological and genotyping studies.


Subject(s)
Image Processing, Computer-Assisted , Precision Medicine , Humans , Image Processing, Computer-Assisted/methods , Magnetic Resonance Imaging , Medical Oncology , Positron-Emission Tomography
5.
Diagnostics (Basel) ; 11(1)2020 Dec 30.
Article in English | MEDLINE | ID: mdl-33396587

ABSTRACT

The coronavirus disease 2019 (COVID-19) outbreak has reached pandemic status. Drastic measures of social distancing are enforced in society and healthcare systems are being pushed to and beyond their limits. To help in the fight against this threat on human health, a fully automated AI framework was developed to extract radiomics features from volumetric chest computed tomography (CT) exams. The detection model was developed on a dataset of 1381 patients (181 COVID-19 patients plus 1200 non COVID control patients). A second, independent dataset of 197 RT-PCR confirmed COVID-19 patients and 500 control patients was used to assess the performance of the model. Diagnostic performance was assessed by the area under the receiver operating characteristic curve (AUC). The model had an AUC of 0.882 (95% CI: 0.851-0.913) in the independent test dataset (641 patients). The optimal decision threshold, considering the cost of false negatives twice as high as the cost of false positives, resulted in an accuracy of 85.18%, a sensitivity of 69.52%, a specificity of 91.63%, a negative predictive value (NPV) of 94.46% and a positive predictive value (PPV) of 59.44%. Benchmarked against RT-PCR confirmed cases of COVID-19, our AI framework can accurately differentiate COVID-19 from routine clinical conditions in a fully automated fashion. Thus, providing rapid accurate diagnosis in patients suspected of COVID-19 infection, facilitating the timely implementation of isolation procedures and early intervention.

6.
J Belg Soc Radiol ; 103(1): 30, 2019 May 10.
Article in English | MEDLINE | ID: mdl-31119205
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