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1.
JACC Case Rep ; 4(16): 1037-1041, 2022 Aug 17.
Article in English | MEDLINE | ID: mdl-36062056

ABSTRACT

Primary cardiac synovial sarcomas are very rare, representing <1% of all primary cardiac tumors. We report the case of a 19-year-old man with syncope and dynamic obstructive shock caused by a large right-sided intracardiac tumor. (Level of Difficulty: Beginner .).

2.
Thromb Res ; 209: 51-58, 2022 Jan.
Article in English | MEDLINE | ID: mdl-34871982

ABSTRACT

BACKGROUND: Identifying venous thromboembolism (VTE) from large clinical and administrative databases is important for research and quality improvement. OBJECTIVE: To develop and validate natural language processing (NLP) algorithms to identify VTE from radiology reports among general internal medicine (GIM) inpatients. METHODS: This cross-sectional study included GIM hospitalizations between April 1, 2010 and March 31, 2017 at 5 hospitals in Toronto, Ontario, Canada. We developed NLP algorithms to identify pulmonary embolism (PE) and deep venous thrombosis (DVT) from radiologist reports of thoracic computed tomography (CT), extremity compression ultrasound (US), and nuclear ventilation-perfusion (VQ) scans in a training dataset of 1551 hospitalizations. We compared the accuracy of our NLP algorithms, the previously-published "simpleNLP" tool, and administrative discharge diagnosis codes (ICD-10-CA) for PE and DVT to the "gold standard" manual review in a separate random sample of 4000 GIM hospitalizations. RESULTS: Our NLP algorithms were highly accurate for identifying DVT from US, with sensitivity 0.94, positive predictive value (PPV) 0.90, and Area Under the Receiver-Operating-Characteristic Curve (AUC) 0.96; and in identifying PE from CT, with sensitivity 0.91, PPV 0.89, and AUC 0.96. Administrative diagnosis codes and the simple NLP tool were less accurate for DVT (ICD-10-CA sensitivity 0.63, PPV 0.43, AUC 0.81; simpleNLP sensitivity 0.41, PPV 0.36, AUC 0.66) and PE (ICD-10-CA sensitivity 0.83, PPV 0.70, AUC 0.91; simpleNLP sensitivity 0.89, PPV 0.62, AUC 0.92). CONCLUSIONS: Administrative diagnosis codes are unreliable in identifying VTE in hospitalized patients. We developed highly accurate NLP algorithms to identify VTE from radiology reports in a multicentre sample and have made the algorithms freely available to the academic community with a user-friendly tool (https://lks-chart.github.io/CHARTextract-docs/08-downloads/rulesets.html#venous-thromboembolism-vte-rulesets).


Subject(s)
Pulmonary Embolism , Radiology , Venous Thromboembolism , Algorithms , Cross-Sectional Studies , Hospitalization , Humans , International Classification of Diseases , Natural Language Processing , Ontario , Pulmonary Embolism/diagnostic imaging , Venous Thromboembolism/diagnostic imaging
3.
JACC Case Rep ; 2(2): 296-299, 2020 Feb.
Article in English | MEDLINE | ID: mdl-34317227

ABSTRACT

We present the case of a patient with depression who attempted suicide through self-dissection and severing of her permanent pacemaker leads. The case highlights the importance of screening for psychiatric disorders prior to device implantation and continued surveillance for self-harm behaviors. (Level of Difficulty: Beginner.).

5.
Ultrasonics ; 53(2): 335-44, 2013 Feb.
Article in English | MEDLINE | ID: mdl-22853949

ABSTRACT

A technique is proposed for the detection of abnormalities (targets) in ultrasound images using little or no a priori information and requiring little operator intervention. The scheme is a combination of the CLEAN algorithm, originally proposed for radio astronomy, and constant false alarm rate (CFAR) processing, as developed for use in radar systems. The CLEAN algorithm identifies areas in the ultrasound image that stand out above a threshold in relation to the background; CFAR techniques allow for an adaptive, semi-automated, selection of the threshold. Neither appears to have been previously used for target detection in ultrasound images and never together in any context. As a first step towards assessing the potential of this method we used a widely used method of simulating B-mode images (Field II). We assumed the use of a 256 element linear array operating at 3.0MHz into a water-like medium containing a density of point scatterers sufficient to simulate a background of fully developed speckle. Spherical targets with diameters ranging from 0.25 to 6.0mm and contrasts ranging from 0 to 12dB relative to the background were used as test objects. Using a contrast-detail analysis, the probability of detection curves indicate these targets can be consistently detected within a speckle background. Our results indicate that the method has considerable promise for the semi-automated detection of abnormalities with diameters greater than a few millimeters, depending on the contrast.


Subject(s)
Diagnosis, Computer-Assisted , Ultrasonography , Algorithms , Image Interpretation, Computer-Assisted
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