7 results on '"Mizuho Nishio"'
Search Results
2. Deep learning model for predicting gestational age after the first trimester using fetal MRI
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Mizuho Nishio, Masatoshi Hori, Munenobu Nogami, Hidetoshi Matsuo, Yasuyuki Kojita, Keitaro Sofue, Takamichi Murakami, Atsushi K. Kono, and Tomonori Kanda
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medicine.medical_specialty ,Prenatal care ,Ultrasonography, Prenatal ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Fetus ,Pregnancy ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Retrospective Studies ,Neuroradiology ,Obstetrics ,business.industry ,Ultrasound ,Infant ,Gestational age ,Brain ,Prenatal Care ,Retrospective cohort study ,Deep learning ,General Medicine ,medicine.disease ,Magnetic Resonance Imaging ,Pregnancy Trimester, First ,Concordance correlation coefficient ,030220 oncology & carcinogenesis ,Female ,Radiology ,business - Abstract
To evaluate a deep learning model for predicting gestational age from fetal brain MRI acquired after the first trimester in comparison to biparietal diameter (BPD). Our Institutional Review Board approved this retrospective study, and a total of 184 T2-weighted MRI acquisitions from 184 fetuses (mean gestational age: 29.4 weeks) who underwent MRI between January 2014 and June 2019 were included. The reference standard gestational age was based on the last menstruation and ultrasonography measurements in the first trimester. The deep learning model was trained with T2-weighted images from 126 training cases and 29 validation cases. The remaining 29 cases were used as test data, with fetal age estimated by both the model and BPD measurement. The relationship between the estimated gestational age and the reference standard was evaluated with Lin’s concordance correlation coefficient (ρc) and a Bland-Altman plot. The ρc was assessed with McBride’s definition. The ρc of the model prediction was substantial (ρc = 0.964), but the ρc of the BPD prediction was moderate (ρc = 0.920). Both the model and BPD predictions had greater differences from the reference standard at increasing gestational age. However, the upper limit of the model’s prediction (2.45 weeks) was significantly shorter than that of BPD (5.62 weeks). Deep learning can accurately predict gestational age from fetal brain MR acquired after the first trimester. • The prediction of gestational age using ultrasound is accurate in the first trimester but becomes inaccurate as gestational age increases. • Deep learning can accurately predict gestational age from fetal brain MRI acquired in the second and third trimester. • Prediction of gestational age by deep learning may have benefits for prenatal care in pregnancies that are underserved during the first trimester.
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- 2021
3. Deep learning-based algorithm improved radiologists' performance in bone metastases detection on CT
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Shunjiro, Noguchi, Mizuho, Nishio, Ryo, Sakamoto, Masahiro, Yakami, Koji, Fujimoto, Yutaka, Emoto, Takeshi, Kubo, Yoshio, Iizuka, Keita, Nakagomi, Kazuhiro, Miyasa, Kiyohide, Satoh, and Yuji, Nakamoto
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Deep Learning ,Radiologists ,Humans ,Radiographic Image Interpretation, Computer-Assisted ,Bone Neoplasms ,Tomography, X-Ray Computed ,Algorithms ,Retrospective Studies - Abstract
To develop and evaluate a deep learning-based algorithm (DLA) for automatic detection of bone metastases on CT.This retrospective study included CT scans acquired at a single institution between 2009 and 2019. Positive scans with bone metastases and negative scans without bone metastasis were collected to train the DLA. Another 50 positive and 50 negative scans were collected separately from the training dataset and were divided into validation and test datasets at a 2:3 ratio. The clinical efficacy of the DLA was evaluated in an observer study with board-certified radiologists. Jackknife alternative free-response receiver operating characteristic analysis was used to evaluate observer performance.A total of 269 positive scans including 1375 bone metastases and 463 negative scans were collected for the training dataset. The number of lesions identified in the validation and test datasets was 49 and 75, respectively. The DLA achieved a sensitivity of 89.8% (44 of 49) with 0.775 false positives per case for the validation dataset and 82.7% (62 of 75) with 0.617 false positives per case for the test dataset. With the DLA, the overall performance of nine radiologists with reference to the weighted alternative free-response receiver operating characteristic figure of merit improved from 0.746 to 0.899 (p.001). Furthermore, the mean interpretation time per case decreased from 168 to 85 s (p = .004).With the aid of the algorithm, the overall performance of radiologists in bone metastases detection improved, and the interpretation time decreased at the same time.• A deep learning-based algorithm for automatic detection of bone metastases on CT was developed. • In the observer study, overall performance of radiologists in bone metastases detection improved significantly with the aid of the algorithm. • Radiologists' interpretation time decreased at the same time.
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- 2021
4. CT temporal subtraction improves early detection of bone metastases compared to SPECT
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Kaori Togashi, Koji Onoue, Thai Akasaka, Masahiro Yakami, Hiroyuki Yamamoto, Kiyohide Satoh, Gakuto Aoyama, Takeshi Kubo, Yoshio Iizuka, Mizuho Nishio, Keita Nakagomi, Hiroyoshi Isoda, and Yutaka Emoto
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Adult ,Male ,medicine.medical_specialty ,Early detection ,Bone Neoplasms ,Scintigraphy ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Image Processing, Computer-Assisted ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Neoplasm Metastasis ,Early Detection of Cancer ,Aged ,Neuroradiology ,Aged, 80 and over ,Tomography, Emission-Computed, Single-Photon ,medicine.diagnostic_test ,business.industry ,Ultrasound ,Bone metastasis ,Interventional radiology ,General Medicine ,Middle Aged ,medicine.disease ,ROC Curve ,Bone scintigraphy ,030220 oncology & carcinogenesis ,Female ,Radiology ,Tomography, X-Ray Computed ,business ,Emission computed tomography - Abstract
To compare observer performance of detecting bone metastases between bone scintigraphy, including planar scan and single-photon emission computed tomography, and computed tomography (CT) temporal subtraction (TS). Data on 60 patients with cancer who had undergone CT (previous and current) and bone scintigraphy were collected. Previous CT images were registered to the current ones by large deformation diffeomorphic metric mapping; the registered previous images were subtracted from the current ones to produce TS. Definitive diagnosis of bone metastases was determined by consensus between two radiologists. Twelve readers independently interpreted the following pairs of examinations: NM-pair, previous and current CTs and bone scintigraphy, and TS-pair, previous and current CTs and TS. The readers assigned likelihood levels to suspected bone metastases for diagnosis. Sensitivity, number of false positives per patient (FPP), and reading time for each pair of examinations were analysed for evaluating observer performance by performing the Wilcoxon signed-rank test. Figure-of-merit (FOM) was calculated using jackknife alternative free-response receiver operating characteristic analysis. The sensitivity of TS was significantly higher than that of bone scintigraphy (54.3% vs. 41.3%, p = 0.006). FPP with TS was significantly higher than that with bone scintigraphy (0.189 vs. 0.0722, p = 0.003). FOM of TS tended to be better than that of bone scintigraphy (0.742 vs. 0.691, p = 0.070). Sensitivity of TS in detecting bone metastasis was significantly higher than that of bone scintigraphy, but still limited to 54%. TS might be superior to bone scintigraphy for early detection of bone metastasis. • Computed tomography temporal subtraction was helpful in early detection of bone metastases. • Sensitivity for bone metastasis was higher for computed tomography temporal subtraction than for bone scintigraphy. • Figure-of-merit of computed tomography temporal subtraction was better than that of bone scintigraphy.
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- 2019
5. Detection of suspected brain infarctions on CT can be significantly improved with temporal subtraction images
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Yutaka Emoto, Koji Onoue, Masahiro Yakami, Thai Akasaka, Yoshio Iizuka, Takeshi Kubo, Mizuho Nishio, Keita Nakagomi, Kaori Togashi, Kiyohide Satoh, Gakuto Aoyama, and Hiroyuki Yamamoto
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Male ,medicine.medical_specialty ,Wilcoxon signed-rank test ,Subtraction technique ,Temporal subtraction ,Sensitivity and Specificity ,030218 nuclear medicine & medical imaging ,Multidetector computed tomography ,03 medical and health sciences ,0302 clinical medicine ,False positive paradox ,Medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Stroke ,Neuroradiology ,Aged ,Retrospective Studies ,Aged, 80 and over ,medicine.diagnostic_test ,business.industry ,Ultrasound ,Interventional radiology ,General Medicine ,Middle Aged ,medicine.disease ,Computer assisted diagnosis ,ROC Curve ,Brain infarction ,030220 oncology & carcinogenesis ,Radiographic Image Interpretation, Computer-Assisted ,Female ,Radiology ,business ,Tomography, X-Ray Computed ,Algorithms - Abstract
To assess whether temporal subtraction (TS) images of brain CT improve the detection of suspected brain infarctions. Study protocols were approved by our institutional review board, and informed consent was waived because of the retrospective nature of this study. Forty-two sets of brain CT images of 41 patients, each consisting of a pair of brain CT images scanned at two time points (previous and current) between January 2011 and November 2016, were collected for an observer performance study. The 42 sets consisted of 23 cases with a total of 77 newly developed brain infarcts or hyperdense artery signs confirmed by two radiologists who referred to additional clinical information and 19 negative control cases. To create TS images, the previous images were registered to the current images by partly using a non-rigid registration algorithm and then subtracted. Fourteen radiologists independently interpreted the images to identify the lesions with and without TS images with an interval of over 4 weeks. A figure of merit (FOM) was calculated along with the jackknife alternative free-response receiver-operating characteristic analysis. Sensitivity, number of false positives per case (FPC) and reading time were analyzed by the Wilcoxon signed-rank test. The mean FOM increased from 0.528 to 0.737 with TS images (p < 0.0001). The mean sensitivity and FPC improved from 26.5% and 0.243 to 56.0% and 0.153 (p < 0.0001 and p = 0.239), respectively. The mean reading time was 173 s without TS and 170 s with TS (p = 0.925). The detectability of suspected brain infarctions was significantly improved with TS CT images. • Although it is established that MRI is superior to CT in the detection of strokes, the first choice of modality for suspected stroke patients is often CT. • An observer performance study with 14 radiologists was performed to evaluate whether temporal subtraction images derived from a non-rigid transformation algorithm can significantly improve the detectability of newly developed brain infarcts on CT. • Temporal subtraction images were shown to significantly improve the detectability of newly developed brain infarcts on CT.
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- 2019
6. Temporal subtraction of computed tomography images improves detectability of bone metastases by radiology residents
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Yutaka Emoto, Takeshi Kubo, Kaori Togashi, Mizuho Nishio, Keita Nakagomi, Kiyohide Satoh, Gakuto Aoyama, Masahiro Yakami, Ryo Sakamoto, Koji Onoue, Thai Akasaka, Yoshio Iizuka, Hiroyoshi Isoda, and Hiroyuki Yamamoto
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medicine.medical_specialty ,Computed tomography ,Bone Neoplasms ,Temporal subtraction ,Sensitivity and Specificity ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Image Interpretation, Computer-Assisted ,medicine ,False positive paradox ,Humans ,Radiology, Nuclear Medicine and imaging ,medicine.diagnostic_test ,business.industry ,Internship and Residency ,General Medicine ,030220 oncology & carcinogenesis ,Subtraction Technique ,Oncology patients ,Radiology ,Clinical Competence ,business ,Tomography, X-Ray Computed ,Algorithms - Abstract
Temporal subtraction of CT (TS) images improves detection of newly developed bone metastases (BM). We sought to determine whether TS improves detection of BM by radiology residents as well. We performed an observer study using a previously reported dataset, consisting of 60 oncology patients, each with previous and current CT images. TS images were calculated using in-house software. Four residents independently interpreted twice the 60 sets of CT images, without and with TS. They identified BM by marking suspicious lesions likely to be BM. Lesion-based sensitivity and number of false positives per patient were calculated. Figure-of-merit (FOM) was calculated. Detectability of BM, with and without TS, was compared between radiology residents and board-certified radiologists, as published previously. FOM of residents significantly improved by implementing TS (p value
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- 2019
7. Iterative reconstruction technique vs filter back projection: utility for quantitative bronchial assessment on low-dose thin-section MDCT in patients with/without chronic obstructive pulmonary disease
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Yoshiharu Ohno, Hisanobu Koyama, Takeshi Yoshikawa, Sumiaki Matsumoto, Naoki Sugihara, Shinichiro Seki, Kazuro Sugimura, and Mizuho Nishio
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Male ,medicine.medical_specialty ,Concordance ,Bronchi ,Iterative reconstruction ,Radiation Dosage ,Pulmonary Disease, Chronic Obstructive ,Multidetector Computed Tomography ,Medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Neuroradiology ,Aged ,Aged, 80 and over ,COPD ,Lung ,business.industry ,Ultrasound ,Reproducibility of Results ,General Medicine ,respiratory system ,Bronchography ,Middle Aged ,medicine.disease ,medicine.anatomical_structure ,Concordance correlation coefficient ,Radiographic Image Interpretation, Computer-Assisted ,Female ,Radiology ,business ,Airway - Abstract
The aim of this study was to evaluate the utility of the iterative reconstruction (IR) technique for quantitative bronchial assessment during low-dose computed tomography (CT) as a substitute for standard-dose CT in patients with/without chronic obstructive pulmonary disease. Fifty patients (mean age, 69.2; mean % predicted FEV1, 79.4) underwent standard-dose CT (150mAs) and low-dose CT (25mAs). Except for tube current, the imaging parameters were identical for both protocols. Standard-dose CT was reconstructed using filtered back-projection (FBP), and low-dose CT was reconstructed using IR and FBP. For quantitative bronchial assessment, the wall area percentage (WA%) of the sub-segmental bronchi and the airway luminal volume percentage (LV%) from the main bronchus to the peripheral bronchi were acquired in each dataset. The correlation and agreement of WA% and LV% between standard-dose CT and both low-dose CTs were statistically evaluated. WA% and LV% between standard-dose CT and both low-dose CTs were significant correlated (r > 0.77, p
- Published
- 2013
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