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Dive into the research topics where Aya Konishi is active.

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Featured researches published by Aya Konishi.


PLOS ONE | 2018

Evaluation of cell count and classification capabilities in body fluids using a fully automated Sysmex XN equipped with high-sensitive Analysis (hsA) mode and DI-60 hematology analyzer system

Hiroyuki Takemura; Tomohiko Ai; Konobu Kimura; Kaori Nagasaka; Toshihiro Takahashi; Koji Tsuchiya; Haeun Yang; Aya Konishi; Kinya Uchihashi; Takashi Horii; Yoko Tabe; Akimichi Ohsaka

The XN series automated hematology analyzer has been equipped with a body fluid (BF) mode to count and differentiate leukocytes in BF samples including cerebrospinal fluid (CSF). However, its diagnostic accuracy is not reliable for CSF samples with low cell concentration at the border between normal and pathologic level. To overcome this limitation, a new flow cytometry-based technology, termed “high sensitive analysis (hsA) mode,” has been developed. In addition, the XN series analyzer has been equipped with the automated digital cell imaging analyzer DI-60 to classify cell morphology including normal leukocytes differential and abnormal malignant cells detection. Using various BF samples, we evaluated the performance of the XN-hsA mode and DI-60 compared to manual microscopic examination. The reproducibility of the XN-hsA mode showed good results in samples with low cell densities (coefficient of variation; % CV: 7.8% for 6 cells/μL). The linearity of the XN-hsA mode was established up to 938 cells/μL. The cell number obtained using the XN-hsA mode correlated highly with the corresponding microscopic examination. Good correlation was also observed between the DI-60 analyses and manual microscopic classification for all leukocyte types, except monocytes. In conclusion, the combined use of cell counting with the XN-hsA mode and automated morphological analyses using the DI-60 mode is potentially useful for the automated analysis of BF cells.


PLOS ONE | 2018

Novel flowcytometry-based approach of malignant cell detection in body fluids using an automated hematology analyzer

Tomohiko Ai; Yoko Tabe; Hiroyuki Takemura; Konobu Kimura; Toshihiro Takahashi; Haeun Yang; Koji Tsuchiya; Aya Konishi; Kinya Uchihashi; Takashi Horii; Akimichi Ohsaka

Morphological microscopic examinations of nucleated cells in body fluid (BF) samples are performed to screen malignancy. However, the morphological differentiation is time-consuming and labor-intensive. This study aimed to develop a new flowcytometry-based gating analysis mode “XN-BF gating algorithm” to detect malignant cells using an automated hematology analyzer, Sysmex XN-1000. XN-BF mode was equipped with WDF white blood cell (WBC) differential channel. We added two algorithms to the WDF channel: Rule 1 detects larger and clumped cell signals compared to the leukocytes, targeting the clustered malignant cells; Rule 2 detects middle sized mononuclear cells containing less granules than neutrophils with similar fluorescence signal to monocytes, targeting hematological malignant cells and solid tumor cells. BF samples that meet, at least, one rule were detected as malignant. To evaluate this novel gating algorithm, 92 various BF samples were collected. Manual microscopic differentiation with the May-Grunwald Giemsa stain and WBC count with hemocytometer were also performed. The performance of these three methods were evaluated by comparing with the cytological diagnosis. The XN-BF gating algorithm achieved sensitivity of 63.0% and specificity of 87.8% with 68.0% for positive predictive value and 85.1% for negative predictive value in detecting malignant-cell positive samples. Manual microscopic WBC differentiation and WBC count demonstrated 70.4% and 66.7% of sensitivities, and 96.9% and 92.3% of specificities, respectively. The XN-BF gating algorithm can be a feasible tool in hematology laboratories for prompt screening of malignant cells in various BF samples.


Archive | 2003

Method of classifying and counting leucocytes

Tomohiro Tsuji; Toshihiro Mizukami; Aya Konishi; Yusuke Mori; Yukie Nakazawa


Archive | 2003

Method of classifying counting leucocytes

Tomohiro Tsuji; Toshihiro Mizukami; Aya Konishi; Yusuke Mori; Yukie Nakazawa


Archive | 2003

Method for automatically analyzing nucleated bone marrow cells

Tomohiro Tsuji; Yuji Itose; Aya Konishi


Archive | 2009

Blood analyzer, blood analysis method and hemolytic agent

Hideaki Matsumoto; Kinya Uchihashi; Yuji Itose; Aya Konishi


Archive | 2006

Reagent for partially lysing a cell membrane of a red blood cell, a reagent for detecting malaria infected red blood cells, and a sample analyzing method for detecting malaria infected red blood cells

Ayumu Yoshida; Kinya Uchihashi; Yuji Itose; Aya Konishi; Hiromitsu Iizuka


Archive | 2009

Blood analyzer, blood analysis method, hemolytic agent and staining agent

Hideaki Matsumoto; Kinya Uchihashi; Yuji Itose; Aya Konishi; Ayumu Yoshida


Archive | 2006

Method for detecting malaria infected red blood cell, reagent for detection used therefor, and reagent for partial lysis of cell membrane of red blood cell

Hiromitsu Iizuka; Yuuji Itose; Aya Konishi; Kinya Uchihashi; Ayumi Yoshida; 欣也 内橋; 歩 吉田; 綾 小西; 裕司 糸瀬; 啓光 飯塚


Blood | 2015

Novel Flowcytometry-Based Approach for Detection of Tumor Cells in Body Fluid Using Automated Hematology Analyzer

Yoko Tabe; Hiroyuki Takemura; Konobu Kimura; Aya Konishi; Takashi Horii; Takashi Miida; Akimichi Ohsaka

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