20 results on '"Ilah Shin"'
Search Results
2. Deep learning improves quality of intracranial vessel wall MRI for better characterization of potentially culprit plaques
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Minkook Seo, Woojin Jung, Geunu Jeong, Seungwook Yang, Ilah Shin, Ji Young Lee, Kook-Jin Ahn, Bum-soo Kim, and Jinhee Jang
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Intracranial vessel wall imaging ,Image quality ,Deep learning ,Super-resolution ,Intracranial atherosclerosis ,Medicine ,Science - Abstract
Abstract Intracranial vessel wall imaging (VWI), which requires both high spatial resolution and high signal-to-noise ratio (SNR), is an ideal candidate for deep learning (DL)-based image quality improvement. Conventional VWI (Conv-VWI, voxel size 0.51 × 0.51 × 0.45 mm3) and denoised super-resolution DL-VWI (0.28 × 0.28 × 0.45 mm3) of 117 patients were analyzed in this retrospective study. Quality of the images were compared qualitatively and quantitatively. Diagnostic performance for identifying potentially culprit atherosclerotic plaques, using lesion enhancement and presence of intraplaque hemorrhage (IPH), was evaluated. DL-VWI significantly outperformed Conv-VWI in all image quality ratings (all P
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- 2024
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3. Revisiting gliomatosis cerebri in adult-type diffuse gliomas: a comprehensive imaging, genomic and clinical analysis
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Ilah Shin, Yae Won Park, Yongsik Sim, Seo Hee Choi, Sung Soo Ahn, Jong Hee Chang, Se Hoon Kim, Seung-Koo Lee, and Rajan Jain
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Glioma ,Glioblastoma ,Gliomatosis cerebri ,Magnetic resonance imaging ,World Health Organization ,Neurology. Diseases of the nervous system ,RC346-429 - Abstract
Abstract Although gliomatosis cerebri (GC) has been removed as an independent tumor type from the WHO classification, its extensive infiltrative pattern may harbor a unique biological behavior. However, the clinical implication of GC in the context of the 2021 WHO classification is yet to be unveiled. This study investigated the incidence, clinicopathologic and imaging correlations, and prognostic implications of GC in adult-type diffuse glioma patients. Retrospective chart and imaging review of 1,211 adult-type diffuse glioma patients from a single institution between 2005 and 2021 was performed. Among 1,211 adult-type diffuse glioma patients, there were 99 (8.2%) patients with GC. The proportion of molecular types significantly differed between patients with and without GC (P = 0.017); IDH-wildtype glioblastoma was more common (77.8% vs. 66.5%), while IDH-mutant astrocytoma (16.2% vs. 16.9%) and oligodendroglioma (6.1% vs. 16.5%) were less common in patients with GC than in those without GC. The presence of contrast enhancement, necrosis, cystic change, hemorrhage, and GC type 2 were independent risk factors for predicting IDH mutation status in GC patients. GC remained as an independent prognostic factor (HR = 1.25, P = 0.031) in IDH-wildtype glioblastoma patients on multivariable analysis, along with clinical, molecular, and surgical factors. Overall, our data suggests that although no longer included as a distinct pathological entity in the WHO classification, recognition of GC may be crucial considering its clinical significance. There is a relatively high incidence of GC in adult-type diffuse gliomas, with different proportion according to molecular types between patients with and without GC. Imaging may preoperatively predict the molecular type in GC patients and may assist clinical decision-making. The prognostic role of GC promotes its recognition in clinical settings.
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- 2024
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4. Deep learning-based metastasis detection in patients with lung cancer to enhance reproducibility and reduce workload in brain metastasis screening with MRI: a multi-center study
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Yae Won Park, Ji Eun Park, Sung Soo Ahn, Kyunghwa Han, NakYoung Kim, Joo Young Oh, Da Hyun Lee, So Yeon Won, Ilah Shin, Ho Sung Kim, and Seung-Koo Lee
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Brain metastases ,Brain tumors ,Deep learning ,Magnetic resonance imaging ,Medical physics. Medical radiology. Nuclear medicine ,R895-920 ,Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Abstract
Abstract Objectives To assess whether a deep learning-based system (DLS) with black-blood imaging for brain metastasis (BM) improves the diagnostic workflow in a multi-center setting. Materials and methods In this retrospective study, a DLS was developed in 101 patients and validated on 264 consecutive patients (with lung cancer) having newly developed BM from two tertiary university hospitals, which performed black-blood imaging between January 2020 and April 2021. Four neuroradiologists independently evaluated BM either with segmented masks and BM counts provided (with DLS) or not provided (without DLS) on a clinical trial imaging management system (CTIMS). To assess reading reproducibility, BM count agreement between the readers and the reference standard were calculated using limits of agreement (LoA). Readers’ workload was assessed with reading time, which was automatically measured on CTIMS, and were compared between with and without DLS using linear mixed models considering the imaging center. Results In the validation cohort, the detection sensitivity and positive predictive value of the DLS were 90.2% (95% confidence interval [CI]: 88.1–92.2) and 88.2% (95% CI: 85.7–90.4), respectively. The difference between the readers and the reference counts was larger without DLS (LoA: −0.281, 95% CI: −2.888, 2.325) than with DLS (LoA: −0.163, 95% CI: −2.692, 2.367). The reading time was reduced from mean 66.9 s (interquartile range: 43.2–90.6) to 57.3 s (interquartile range: 33.6–81.0) (P
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- 2024
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5. Correction: Deep learning-based metastasis detection in patients with lung cancer to enhance reproducibility and reduce workload in brain metastasis screening with MRI: a multi-center study
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Yae Won Park, Ji Eun Park, Sung Soo Ahn, Kyunghwa Han, NakYoung Kim, Joo Young Oh, Da Hyun Lee, So Yeon Won, Ilah Shin, Ho Sung Kim, and Seung-Koo Lee
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Medical physics. Medical radiology. Nuclear medicine ,R895-920 ,Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Published
- 2024
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6. Deep-learned time-signal intensity pattern analysis using an autoencoder captures magnetic resonance perfusion heterogeneity for brain tumor differentiation
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Ji Eun Park, Ho Sung Kim, Junkyu Lee, E.-Nae Cheong, Ilah Shin, Sung Soo Ahn, and Woo Hyun Shim
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Medicine ,Science - Abstract
Abstract Current image processing methods for dynamic susceptibility contrast (DSC) magnetic resonance imaging (MRI) do not capture complex dynamic information of time-signal intensity curves. We investigated whether an autoencoder-based pattern analysis of DSC MRI captured representative temporal features that improves tissue characterization and tumor diagnosis in a multicenter setting. The autoencoder was applied to the time-signal intensity curves to obtain representative temporal patterns, which were subsequently learned by a convolutional neural network. This network was trained with 216 preoperative DSC MRI acquisitions and validated using external data (n = 43) collected with different DSC acquisition protocols. The autoencoder applied to time-signal intensity curves and clustering obtained nine representative clusters of temporal patterns, which accurately identified tumor and non-tumoral tissues. The dominant clusters of temporal patterns distinguished primary central nervous system lymphoma (PCNSL) from glioblastoma (AUC 0.89) and metastasis from glioblastoma (AUC 0.95). The autoencoder captured DSC time-signal intensity patterns that improved identification of tumoral tissues and differentiation of tumor type and was generalizable across centers.
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- 2020
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7. Application of machine learning to ultrasound images to differentiate follicular neoplasms of the thyroid gland
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Ilah Shin, Young Jae Kim, Kyunghwa Han, Eunjung Lee, Hye Jung Kim, Jung Hee Shin, Hee Jung Moon, Ji Hyun Youk, Kwang Gi Kim, and Jin Young Kwak
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follicular neoplasm ,ultrasonography ,machine learning ,artificial neural network ,support vector machine ,Medical technology ,R855-855.5 - Abstract
Purpose This study was conducted to evaluate the diagnostic performance of machine learning in differentiating follicular adenoma from carcinoma using preoperative ultrasonography (US). Methods In this retrospective study, preoperative US images of 348 nodules from 340 patients were collected from two tertiary referral hospitals. Two experienced radiologists independently reviewed each image and categorized the nodules according to the 2015 American Thyroid Association guideline. Categorization of a nodule as highly suspicious was considered a positive diagnosis for malignancy. The nodules were manually segmented, and 96 radiomic features were extracted from each region of interest. Ten significant features were selected and used as final input variables in our in-house developed classifier models based on an artificial neural network (ANN) and support vector machine (SVM). The diagnostic performance of radiologists and both classifier models was calculated and compared. Results In total, 252 nodules from 245 patients were confirmed as follicular adenoma and 96 nodules from 95 patients were diagnosed as follicular carcinoma. As measures of diagnostic performance, the average sensitivity, specificity, and accuracy of the two experienced radiologists in discriminating follicular adenoma from carcinoma on preoperative US images were 24.0%, 84.0%, and 64.8%, respectively. The sensitivity, specificity, and accuracy of the ANN and SVM-based models were 32.3%, 90.1%, and 74.1% and 41.7%, 79.4%, and 69.0%, respectively. The kappa value of the two radiologists was 0.076, corresponding to slight agreement. Conclusion Machine learning-based classifier models may aid in discriminating follicular adenoma from carcinoma using preoperative US.
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- 2020
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8. Development and Multicenter, Multiprotocol Validation of Neural Network for Aberrant Right Subclavian Artery Detection.
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So Yeon Won, Ilah Shin, Eung Yeop Kim, Seung-Koo Lee, Youngno Yoon, and Beomseok Sohn
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Purpose: This study aimed to develop and validate a convolutional neural network (CNN) that automatically detects an aberrant right subclavian artery (ARSA) on preoperative computed tomography (CT) for thyroid cancer evaluation. Materials and Methods: A total of 556 CT with ARSA and 312 CT with normal aortic arch from one institution were used as the training set for model development. A deep learning model for the classification of patch images for ARSA was developed using two-dimension CNN from EfficientNet. The diagnostic performance of our model was evaluated using external test sets (112 and 126 CT) from two institutions. The performance of the model was compared with that of radiologists for detecting ARSA using an independent dataset of 1683 consecutive neck CT. Results: The performance of the model was achieved using two external datasets with an area under the curve of 0.97 and 0.99, and accuracy of 97% and 99%, respectively. In the temporal validation set, which included a total of 20 patients with ARSA and 1663 patients without ARSA, radiologists overlooked 13 ARSA cases. In contrast, the CNN model successfully detected all the 20 patients with ARSA. Conclusion: We developed a CNN-based deep learning model that detects ARSA using CT. Our model showed high performance in the multicenter validation. [ABSTRACT FROM AUTHOR]
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- 2024
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9. Clinical and diffusion parameters may noninvasively predict TERT promoter mutation status in grade II meningiomas
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Seok Gu Kang, Yae Won Park, Ilah Shin, Seung Koo Lee, Jong Hee Chang, Se Hoon Kim, and Sung Soo Ahn
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Oncology ,medicine.medical_specialty ,Percentile ,Radiogenomics ,Logistic regression ,030218 nuclear medicine & medical imaging ,Meningioma ,03 medical and health sciences ,0302 clinical medicine ,Internal medicine ,Meningeal Neoplasms ,Humans ,Medicine ,Effective diffusion coefficient ,Radiology, Nuclear Medicine and imaging ,Clinical significance ,Child ,Telomerase ,Aged ,Retrospective Studies ,Radiological and Ultrasound Technology ,medicine.diagnostic_test ,business.industry ,Magnetic resonance imaging ,Odds ratio ,medicine.disease ,Diffusion Magnetic Resonance Imaging ,Mutation ,Neurology (clinical) ,business ,030217 neurology & neurosurgery - Abstract
Background and purpose Increasing evidence suggests that genomic and molecular markers need to be integrated in grading of meningioma. Telomerase reverse transcriptase promoter (TERTp) mutation is receiving attention due to its clinical relevance in the treatment of meningiomas. The predictive ability of conventional and diffusion MRI parameters for determining the TERTp mutation status in grade II meningiomas has yet been identified. Material and methods In this study, 63 patients with surgically confirmed grade II meningiomas (56 TERTp wildtype, 7 TERTp mutant) were included. Conventional imaging features were qualitatively assessed. The maximum diameter, volume of the tumors and histogram parameters from the apparent diffusion coefficient (ADC) were assessed. Independent clinical and imaging risk factors for TERTp mutation were investigated using multivariable logistic regression. The discriminative value of the prediction models with and without imaging features was evaluated. Results In the univariable regression, older age (odds ratio [OR] = 1.13, P = 0.005), larger maximum diameter (OR = 1.09, P = 0.023), larger volume (OR = 1.04, P = 0.014), lower mean ADC (OR = 0.02, P = 0.025), and lower ADC 10th percentile (OR = 0.01, P = 0.014) were predictors of TERTp mutation. In multivariable regression, age (OR = 1.13, P = 0.009) and ADC 10th percentile (OR = 0.01, P = 0.038) were independent predictors of variables for predicting the TERTp mutation status. The performance of the prediction model increased upon inclusion of imaging parameters (area under the curves of 0.86 and 0.91, respectively, without and with imaging parameters). Conclusion Older age and lower ADC 10th percentile may be useful parameters to predict TERTp mutation in grade II meningiomas.
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- 2022
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10. Clinical factors and conventional MRI may independently predict progression-free survival and overall survival in adult pilocytic astrocytomas
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Ilah Shin, Yae Won Park, Sung Soo Ahn, Jinna Kim, Jong Hee Chang, Se Hoon Kim, and Seung-Koo Lee
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Adult ,Brain Neoplasms ,Humans ,Radiology, Nuclear Medicine and imaging ,Neurology (clinical) ,Astrocytoma ,Cardiology and Cardiovascular Medicine ,Glioblastoma ,Prognosis ,Magnetic Resonance Imaging ,Progression-Free Survival ,Retrospective Studies - Abstract
Pilocytic astrocytoma (PA) is rare in adults, and only limited knowledge on the clinical course and prognosis has been available. The combination of clinical information and comprehensive imaging parameters could be used for accurate prognostic stratification in adult PA patients. This study was conducted to predict the prognostic factors from clinical information and conventional magnetic resonance imaging (MRI) features in adult PAs.A total of 56 adult PA patients were enrolled in the institutional cohort. Clinical characteristics including age, sex, anaplastic PA, presence of neurofibromatosis type 1, Karnofsky performance status, extent of resection, and postoperative treatment were collected. MRI characteristics including major axis length, tumor location, presence of the typical 'cystic mass with enhancing mural nodule appearance', proportion of enhancing tumor, the proportion of edema, conspicuity of the nonenhancing margin, and presence of a cyst were evaluated. Univariable and multivariable Cox proportional hazard modeling were performed.The 5-year progression-free survival (PFS) and overall survival (OS) rates were 83.9% and 91.l%, respectively. On univariable analysis, older age, larger proportion of edema, and poor definition of nonenhancing margin were predictors of shorter PFS and OS, respectively (all Ps .05). On multivariable analysis, older age (hazard ratio [HR] = 1.04, P = .014; HR = 1.14, P = .030) and poor definition of nonenhancing margin (HR = 3.66, P = .027; HR = 24.30, P = .024) were independent variables for shorter PFS and OS, respectively.Age and the margin of the nonenhancing part of the tumor may be useful biomarkers for predicting the outcome in adult PAs.
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- 2021
11. Stent Opening Visualization During Mechanical Thrombectomy; Relationship with the Retrieved Clot and Procedural Success
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Byung Moon Kim, Dong Joon Kim, and Ilah Shin
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medicine.medical_specialty ,Mechanical Thrombolysis ,medicine.medical_treatment ,Occlusion ,Medicine ,Humans ,cardiovascular diseases ,Acute ischemic stroke ,Stent retriever ,Acute stroke ,Ischemic Stroke ,Retrospective Studies ,medicine.diagnostic_test ,business.industry ,Rehabilitation ,Stent ,equipment and supplies ,Surgery ,Mechanical thrombectomy ,Vessel diameter ,Treatment Outcome ,Stents ,Neurology (clinical) ,Cardiology and Cardiovascular Medicine ,business ,Cerebral angiography - Abstract
Purpose: The angiographic visualization of the stent during mechanical thrombectomy (MT) may provide information regarding the characteristics of the underlying occluding clot, device-clot interaction, and recanalization. The purpose of this study was to evaluate the open stent sign in relation to the retrieved clot and recanalization. Methodology 78 patients treated with the stent retriever for acute stroke were retrospectively reviewed. The open stent sign was defined as full opening (>80% of normal vessel diameter) of the stent on DSA after deployment across the occlusion. The retrieved clot was visually classified as red or non-red clots. The relationship between the open stent sign and the patient characteristics, recanalization, retrieved clot, and clinical outcome were analyzed. Results Overall successful recanalization and good outcome was achieved in 68 (87.2%) and 35 (44.9%) patients, respectively. Open stent sign was seen in 52 patients (66.7%). Occlusions showing positive open stent sign was associated with significantly higher first pass effect (44.2% vs 19.2%, p=0.044) and successful recanalization rate (94.2% vs 73.1%, p=0.013) compared to negative open stent sign. The open stent sign was associated with higher incidence of red clot (75.0% vs 38.9%, p=0.008). On multivariate analysis, the open stent sign (OR 22.721, 95% CI 1.953-264.372, p=0.013) was a predictor of successful recanalization. Conclusions The visualization of the open stent during MT of acute ischemic stroke may provide added information in terms of clot characteristics and procedural success. The open stent sign is associated with red clots, higher first pass effect and successful recanalization.
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- 2021
12. Deep-learned time-signal intensity pattern analysis using an autoencoder captures magnetic resonance perfusion heterogeneity for brain tumor differentiation
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Ilah Shin, Sung Soo Ahn, Jun-Kyu Lee, Woo Hyun Shim, Ho Sung Kim, E-Nae Cheong, and Ji Eun Park
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Adult ,Male ,Databases, Factual ,Lymphoma ,Computer science ,Science ,Brain tumor ,Contrast Media ,Time signal ,Image processing ,Convolutional neural network ,Article ,030218 nuclear medicine & medical imaging ,Central Nervous System Neoplasms ,Diagnosis, Differential ,03 medical and health sciences ,0302 clinical medicine ,Neoplasms ,Image Processing, Computer-Assisted ,medicine ,Humans ,Cluster analysis ,Aged ,Retrospective Studies ,Multidisciplinary ,medicine.diagnostic_test ,Brain Neoplasms ,business.industry ,Lymphoma, Non-Hodgkin ,Diagnostic markers ,Magnetic resonance imaging ,Pattern recognition ,Middle Aged ,medicine.disease ,Magnetic Resonance Imaging ,Autoencoder ,Intensity (physics) ,CNS cancer ,Perfusion ,Medicine ,Cancer imaging ,Female ,Artificial intelligence ,Glioblastoma ,business ,030217 neurology & neurosurgery - Abstract
Current image processing methods for dynamic susceptibility contrast (DSC) magnetic resonance imaging (MRI) do not capture complex dynamic information of time-signal intensity curves. We investigated whether an autoencoder-based pattern analysis of DSC MRI captured representative temporal features that improves tissue characterization and tumor diagnosis in a multicenter setting. The autoencoder was applied to the time-signal intensity curves to obtain representative temporal patterns, which were subsequently learned by a convolutional neural network. This network was trained with 216 preoperative DSC MRI acquisitions and validated using external data (n = 43) collected with different DSC acquisition protocols. The autoencoder applied to time-signal intensity curves and clustering obtained nine representative clusters of temporal patterns, which accurately identified tumor and non-tumoral tissues. The dominant clusters of temporal patterns distinguished primary central nervous system lymphoma (PCNSL) from glioblastoma (AUC 0.89) and metastasis from glioblastoma (AUC 0.95). The autoencoder captured DSC time-signal intensity patterns that improved identification of tumoral tissues and differentiation of tumor type and was generalizable across centers.
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- 2020
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13. Author Reply: Factors to Consider When Interpreting the Diagnostic Performance of Fine-Needle Aspiration and Core-Needle Biopsy in Specific Patient Population
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Ilah Shin and Jin Young Kwak
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Core needle ,medicine.medical_specialty ,medicine.diagnostic_test ,business.industry ,Biopsy, Fine-Needle ,General Medicine ,Patient population ,Fine-needle aspiration ,Biopsy ,Correspondence ,medicine ,Humans ,Radiology ,Biopsy, Large-Core Needle ,Thyroid Nodule ,business - Published
- 2021
14. Optimisation of the MR protocol in pregnant women with suspected acute appendicitis
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Joon Seok Lim, Ilah Shin, Honsoul Kim, Myeong-Jin Kim, Yong Eun Chung, Chansik An, and Hye Sun Lee
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Adult ,medicine.medical_specialty ,Abdominal pain ,Appendix ,030218 nuclear medicine & medical imaging ,Diagnosis, Differential ,Young Adult ,03 medical and health sciences ,0302 clinical medicine ,Pregnancy ,Prenatal Diagnosis ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Neuroradiology ,030219 obstetrics & reproductive medicine ,medicine.diagnostic_test ,business.industry ,Reproducibility of Results ,Magnetic resonance imaging ,Interventional radiology ,General Medicine ,Appendicitis ,medicine.disease ,Magnetic Resonance Imaging ,Sagittal plane ,Pregnancy Complications ,medicine.anatomical_structure ,Coronal plane ,Acute Disease ,Female ,Radiology ,medicine.symptom ,business - Abstract
To investigate the optimal magnetic resonance (MR) imaging protocol in pregnant women suspected of having acute appendicitis. One hundred and forty-six pregnant women with suspected appendicitis were included. MR images were reviewed by two radiologists in three separate sessions. In session 1, only axial single-shot turbo spin echo (SSH-TSE) T2-weighted images (WI) were included with other routine sequences. In sessions 2 and 3, coronal and sagittal T2WI were sequentially added. The visibility of the appendix and diagnostic confidence of appendicitis were evaluated in each session using a 5-point grading scale. If diseases other than appendicitis were suspected, specific diagnosis with a 5-point confidence scale was recorded. Diagnostic performance for appendicitis and other diseases were evaluated. Twenty-five patients (17.1%) were diagnosed with appendicitis. Among the patients with normal appendix, 28 were diagnosed with other disease. Diagnostic performance including sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), and area under the curve values for diagnosing appendicitis and other diseases showed no significant difference among sets for both reviewers (p>0.05). Diagnostic performance of MR in pregnant patients with suspected appendicitis can be preserved with omission of sagittal or both coronal and sagittal SSH-T2WI. • Diagnostic performance of appendicitis is preserved with omission of sagittal/coronal T2WIs. • Diagnosis of other disease may be sufficient with axial T2WIs only. • Careful serial omission of sagittal and coronal T2WIs can be considered.
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- 2017
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15. T1 bright appendix sign to exclude acute appendicitis in pregnant women
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Ilah Shin, Joon Seok Lim, Yong Eun Chung, Chansik An, and Myeong-Jin Kim
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Adult ,medicine.medical_specialty ,Abdominal pain ,Population ,Appendix ,Sensitivity and Specificity ,digestive system ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Predictive Value of Tests ,Pregnancy ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,education ,neoplasms ,Retrospective Studies ,Neuroradiology ,education.field_of_study ,medicine.diagnostic_test ,business.industry ,Magnetic resonance imaging ,General Medicine ,Appendicitis ,bacterial infections and mycoses ,medicine.disease ,Magnetic Resonance Imaging ,digestive system diseases ,Pregnancy Complications ,surgical procedures, operative ,medicine.anatomical_structure ,Acute abdomen ,030220 oncology & carcinogenesis ,Acute Disease ,Female ,Radiology ,medicine.symptom ,business ,Sign (mathematics) - Abstract
To evaluate the diagnostic value of the T1 bright appendix sign for the diagnosis of acute appendicitis in pregnant women. This retrospective study included 125 pregnant women with suspected appendicitis who underwent magnetic resonance (MR) imaging. The T1 bright appendix sign was defined as a high intensity signal filling more than half length of the appendix on T1-weighted imaging. Sensitivity, specificity, positive predictive value (PPV) and negative predictive value (NPV) of the T1 bright appendix sign for normal appendix identification were calculated in all patients and in those with borderline-sized appendices (6-7 mm). The T1 bright appendix sign was seen in 51% of patients with normal appendices, but only in 4.5% of patients with acute appendicitis. The overall sensitivity, specificity, PPV, and NPV of the T1 bright appendix sign for normal appendix diagnosis were 44.9%, 95.5%, 97.6%, and 30.0%, respectively. All four patients with borderline sized appendix with appendicitis showed negative T1 bright appendix sign. The T1 bright appendix sign is a specific finding for the diagnosis of a normal appendix in pregnant women with suspected acute appendicitis. • Magnetic resonance imaging is increasingly used in emergency settings. • Acute appendicitis is the most common cause of acute abdomen. • Magnetic resonance imaging is widely used in pregnant population. • T1 bright appendix sign can be a specific sign representing normal appendix.
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- 2017
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16. Application of machine learning to ultrasound images to differentiate follicular neoplasms of the thyroid gland
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Jung Hee Shin, Jin Young Kwak, Young Jae Kim, Eunjung Lee, Hee Jung Moon, Hye Jung Kim, Ilah Shin, Kwang Gi Kim, Kyunghwa Han, and Ji Hyun Youk
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Artificial neural network ,lcsh:Medical technology ,Support vector machine ,Adenoma ,Machine learning ,computer.software_genre ,Malignancy ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Region of interest ,Carcinoma ,medicine ,Radiology, Nuclear Medicine and imaging ,Ultrasonography ,business.industry ,Thyroid ,Ultrasound ,Retrospective cohort study ,medicine.disease ,medicine.anatomical_structure ,lcsh:R855-855.5 ,030211 gastroenterology & hepatology ,Original Article ,Artificial intelligence ,Follicular neoplasm ,business ,computer - Abstract
Purpose This study was conducted to evaluate the diagnostic performance of machine learning in differentiating follicular adenoma from carcinoma using preoperative ultrasonography (US). Methods In this retrospective study, preoperative US images of 348 nodules from 340 patients were collected from two tertiary referral hospitals. Two experienced radiologists independently reviewed each image and categorized the nodules according to the 2015 American Thyroid Association guideline. Categorization of a nodule as highly suspicious was considered a positive diagnosis for malignancy. The nodules were manually segmented, and 96 radiomic features were extracted from each region of interest. Ten significant features were selected and used as final input variables in our in-house developed classifier models based on an artificial neural network (ANN) and support vector machine (SVM). The diagnostic performance of radiologists and both classifier models was calculated and compared. Results In total, 252 nodules from 245 patients were confirmed as follicular adenoma and 96 nodules from 95 patients were diagnosed as follicular carcinoma. As measures of diagnostic performance, the average sensitivity, specificity, and accuracy of the two experienced radiologists in discriminating follicular adenoma from carcinoma on preoperative US images were 24.0%, 84.0%, and 64.8%, respectively. The sensitivity, specificity, and accuracy of the ANN and SVM-based models were 32.3%, 90.1%, and 74.1% and 41.7%, 79.4%, and 69.0%, respectively. The kappa value of the two radiologists was 0.076, corresponding to slight agreement. Conclusion Machine learning-based classifier models may aid in discriminating follicular adenoma from carcinoma using preoperative US.
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- 2019
17. Intranodular Vascularity May Be Useful in Predicting Malignancy in Thyroid Nodules with the Intermediate Suspicion Pattern of the 2015 American Thyroid Association Guidelines
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Vivian Youngjean Park, Min Jeong Cho, Ilah Shin, Jin Young Kwak, Kyunghwa Han, Hee Jung Moon, Jung Hyun Yoon, and Eun Kyung Kim
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Thyroid nodules ,Adult ,Image-Guided Biopsy ,Male ,medicine.medical_specialty ,Multivariate analysis ,Acoustics and Ultrasonics ,Biopsy, Fine-Needle ,Biophysics ,030209 endocrinology & metabolism ,medicine.disease_cause ,Malignancy ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Vascularity ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Thyroid Nodule ,Thyroid neoplasm ,Retrospective Studies ,Univariate analysis ,Radiological and Ultrasound Technology ,business.industry ,Thyroid ,Ultrasonography, Doppler ,Odds ratio ,Middle Aged ,medicine.disease ,medicine.anatomical_structure ,Practice Guidelines as Topic ,Female ,Radiology ,Biopsy, Large-Core Needle ,medicine.symptom ,business - Abstract
The aim of the study described here was to determine whether vascularity patterns on Doppler ultrasonography (US) differentiate benign and malignant thyroid nodules with the intermediate suspicion pattern based on the 2015 American Thyroid Association guidelines. A total of 411 benign or malignant thyroid nodules from 406 patients with intermediate-suspicion US features were retrospectively collected. Univariate and multivariate logistic regression analyses with the generalized estimating equation were used to identify factors predicting malignancy, and odds ratios with 95% confidence intervals were calculated. The vascularity patterns significantly differed between the benign (353 of 411, 85.9%) and malignant (58 of 411, 14.1%) nodules (p = 0.005). Only intranodular vascularity was significantly associated with malignancy on univariate analysis (p = 0.006) and was an independent predictor of malignancy on multivariate analysis (p = 0.004). In conclusion, intranodular vascularity on Doppler US may be useful for predicting malignancy in thyroid nodules with the intermediate-suspicion pattern.
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- 2019
18. Core-Needle Biopsy Does Not Show Superior Diagnostic Performance to Fine-Needle Aspiration for Diagnosing Thyroid Nodules
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Jin Young Kwak, Hee Jung Moon, Ilah Shin, Jung Hyun Yoon, Eun Kyung Kim, Si Eun Lee, Vivian Youngjean Park, and Hye Sun Lee
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Adult ,Male ,Core needle ,Thyroid nodules ,medicine.medical_specialty ,Thyroid Gland ,030204 cardiovascular system & hematology ,Radiology, Medical Imaging ,Young Adult ,03 medical and health sciences ,0302 clinical medicine ,Biopsy ,Humans ,Medicine ,Thyroid Nodule ,skin and connective tissue diseases ,Letter to the Editor ,Aged ,Retrospective Studies ,Ultrasonography ,medicine.diagnostic_test ,thyroid neoplasms ,business.industry ,Thyroid ,Nodule (medicine) ,General Medicine ,Middle Aged ,medicine.disease ,Predictive value ,Endocrinology and Metabolism ,body regions ,surgical procedures, operative ,medicine.anatomical_structure ,Fine-needle aspiration ,biopsy, large-core needle ,030220 oncology & carcinogenesis ,biopsy, fine-needle ,Female ,Original Article ,Radiology ,medicine.symptom ,business - Abstract
Purpose To compare the diagnostic performances of fine-needle aspiration (FNA) and core-needle biopsy (CNB) for thyroid nodules according to nodule size. Materials and methods This retrospective study included 320 thyroid nodules from 320 patients who underwent both FNA and CNB at outside clinics and proceeded with surgery in our institution between July 2012 and May 2019. According to nodule size, the diagnostic performances of FNA and CNB were calculated using various combinations of test-negatives and test-positives defined by the Bethesda categories and were compared using the generalized estimated equation and the Delong method. Results There were 279 malignant nodules in 279 patients and 41 benign nodules in 41 patients. The diagnostic performance of FNA was mostly not different from CNB regardless of nodule size, except for negative predictive value, which was better for FNA than CNB when applying Criteria 1 and 2. When applying Criteria 3, the specificity and positive predictive value of FNA were superior to CNB regardless of size. When applying Criteria 4, diagnostic performance did not differ between FNA and CNB regardless of size. After applying Criteria 5, diagnostic performance did not differ between FNA and CNB in nodules ≥2 cm. However, in nodules ≥1 cm and all nodules, the sensitivity, accuracy, and negative predictive value of CNB were better than those of FNA. Conclusion CNB did not show superior diagnostic performance to FNA for diagnosing thyroid nodules.
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- 2020
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19. Differentiation of the Follicular Neoplasm on the Gray-Scale US by Image Selection Subsampling along with the Marginal Outline Using Convolutional Neural Network
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Kwang Gi Kim, Jung Hee Shin, Jeong Kweon Seo, Jin Young Kwak, Ilah Shin, and Young Jae Kim
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Thyroid nodules ,Article Subject ,Computer science ,Normalization (image processing) ,lcsh:Medicine ,Convolutional neural network ,Grayscale ,General Biochemistry, Genetics and Molecular Biology ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,medicine ,Humans ,Thyroid Neoplasms ,Thyroid Nodule ,Ultrasonography ,General Immunology and Microbiology ,Receiver operating characteristic ,Artificial neural network ,business.industry ,Carcinoma ,lcsh:R ,Pattern recognition ,General Medicine ,computer.file_format ,medicine.disease ,030220 oncology & carcinogenesis ,Bitmap ,Neural Networks, Computer ,Artificial intelligence ,business ,computer ,Research Article ,Test data - Abstract
We conducted differentiations between thyroid follicular adenoma and carcinoma for 8-bit bitmap ultrasonography (US) images utilizing a deep-learning approach. For the data sets, we gathered small-boxed selected images adjacent to the marginal outline of nodules and applied a convolutional neural network (CNN) to have differentiation, based on a statistical aggregation, that is, a decision by majority. From the implementation of the method, introducing a newly devised, scalable, parameterized normalization treatment, we observed meaningful aspects in various experiments, collecting evidence regarding the existence of features retained on the margin of thyroid nodules, such as 89.51% of the overall differentiation accuracy for the test data, with 93.19% of accuracy for benign adenoma and 71.05% for carcinoma, from 230 benign adenoma and 77 carcinoma US images, where we used only 39 benign adenomas and 39 carcinomas to train the CNN model, and, with these extremely small training data sets and their model, we tested 191 benign adenomas and 38 carcinomas. We present numerical results including area under receiver operating characteristic (AUROC).
- Published
- 2017
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20. Core-Needle Biopsy Does Not Show Superior Diagnostic Performance to Fine-Needle Aspiration for Diagnosing Thyroid Nodules.
- Author
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Ilah Shin, Eun-Kyung Kim, Hee Jung Moon, Jung Hyun Yoon, Vivian Youngjean Park, Si Eun Lee, Hye Sun Lee, and Jin Young Kwak
- Abstract
Purpose: To compare the diagnostic performances of fine-needle aspiration (FNA) and core-needle biopsy (CNB) for thyroid nodules according to nodule size. Materials and Methods: This retrospective study included 320 thyroid nodules from 320 patients who underwent both FNA and CNB at outside clinics and proceeded with surgery in our institution between July 2012 and May 2019. According to nodule size, the diagnostic performances of FNA and CNB were calculated using various combinations of test-negatives and test-positives defined by the Bethesda categories and were compared using the generalized estimated equation and the Delong method. Results: There were 279 malignant nodules in 279 patients and 41 benign nodules in 41 patients. The diagnostic performance of FNA was mostly not different from CNB regardless of nodule size, except for negative predictive value, which was better for FNA than CNB when applying Criteria 1 and 2. When applying Criteria 3, the specificity and positive predictive value of FNA were superior to CNB regardless of size. When applying Criteria 4, diagnostic performance did not differ between FNA and CNB regardless of size. After applying Criteria 5, diagnostic performance did not differ between FNA and CNB in nodules ≥2 cm. However, in nodules ≥1 cm and all nodules, the sensitivity, accuracy, and negative predictive value of CNB were better than those of FNA. Conclusion: CNB did not show superior diagnostic performance to FNA for diagnosing thyroid nodules. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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