scholarly journals COMPARATIVE STUDY OF ANAEMIA CASES BASED ON PERIPHERAL BLOOD SMEARS AND CELL COUNTER GENERATED RED CELL INDICES

2020 ◽  
pp. 32-34
Author(s):  
Durga Nand Jha ◽  
Ajit Kumar Chaudhary ◽  
Debarshi Jana

Background: Analyzing peripheral blood smears routinely has facilitated interpretation of various hematological disorders and has been a major diagnostic tool. The advent of automated hematology cell counter has improved accuracy, precision and safety. There is still a need to depend on manual techniques for primary calibration. This highlights the importance of maintaining the manual technical skills, Thus, the present study was undertaken to compare anaemia cases based on peripheral blood smears and cell counter generated Red blood cell (RBC) Indices. Material and Methods: The peripheral blood smears in anaemia were evaluated and compared it with cell counter generated red cell indices of 500 anemic patients. The automated analyzer SYSMEX XP-100 was used.Simultaneously, a peripheral smear was prepared according to standard operating procedures and stained by Leishman stain. Results: The cases consisted of normocytic normochromic anaemia (14%), microcytic hypochromic anaemia (76.2%), macrocytic anaemia (0.4%) and dimorphic anaemia (13.4%). In normocytic normochromic anaemia on peripheral smears 65.7% showed normal curve. In microcytic hypochromic anaemia 81.1% showed left shift. In cases of macrocytic anaemia 100% histogram showed right shift. Majority of the curves in dimorphic anaemia showed broad based curve (46.26%). Discussion: The relationship between histogram patterns and peripheral smear diagnosis in dimorphic anaemia posed queries regarding the validity of histocytograms. Hence, peripheral smear examination along with clinical history is an important diagnostic tool while handling the patients with hematological conditions.

Author(s):  
Dileep Kumar Jain

Background: Since the emergence of dengue fever in the past few years, platelet count has become a routine test in every pathology lab. Common methods are by peripheral blood smears made from blood collected in ethylenediaminetetraacetic acid (EDTA) tubes, by neubaeur chamber, automated method by hematology cell counter.Methods: Blood samples of 460 adult patients and 72 children (<15 years), including indoor and outdoor, between May to August 2019, attending Hind institute of medical sciences, were collected in EDTA tubes. Samples were properly mixed on blood shaker and immediately peripheral blood smears were made and stained with Leishman stain. Platelet count of every sample was done by peripheral blood smear and by Mindray (BC5150) automated cell counter, simultaneously.Results:  Results by manual slide method are slightly higher than automated method but significantly not different from automated method.Conclusions: Traditional slide method can also be used if done carefully comparable to automated method especially useful in small labs which can’t afford automated cell counter.


2021 ◽  
Vol 6 (2) ◽  
pp. 132-134
Author(s):  
Dupinder Kaur ◽  
Pooja Agarwal

Hematological parameters like Hb (haemoglobin), TC (total count), DC (differential count), PCV (packed cell volume), MCV (mean red cell corpuscular volume) done in the automated cell counter and peripheral smear findings were studied. Observational study.Out of 250 cases, 192 i.e. 76.8% cases showed microcytic hypochromic anaemia, 30 cases i.e. 12% had normocytic hypochromic anaemia, 27 cases i.e. 10.6% had normocytic normochromic anaemia and dimorphic anaemia was seen in 02 cases i.e. 0.6% cases.Out of 250 cases, 193 i.e. 77.2% cases showed microcytosis maximally in 0-5 years age group and 57 cases i.e. 22.8% had normocytic picture. The distribution of peripheral smear (RBC size) finding with age varied significantly (p value &#60;0.05). Iron deficiency is almost universal when dealing with this magnitude of anaemia. However, clinically speaking, many technical experts believe that to differentiate severe anaemia, a screening for other causes is desirable, all males are recommended to be screened. In the present study of pediatric cases 0-5 years age group males were most affected and prevalence was more in males as compared to females and the predominant morphological pattern was microcytic hypochromic anaemia.


Author(s):  
Dr. Vivek Kumar ◽  
Dr. Jaideo Prasad

The severity of pancytopenia and the underlying pathology determine the management and prognosis. [3] Thus, identification of exact cause will help in implementing appropriate therapy. The major diagnostic problems occur when there are no specific features in the peripheral smear to point the cause. In India the causes of pancytopenia are not well defined, so the present study has been undertaken to evaluate the various causes and to correlate the peripheral blood smear findings. The present study was planned in Department of Pathology, Anugrah Narayan Magadh Medical College, Gaya, Bihar from july 2017 to Dec 2017. Total 50 cases of the clinical suspicion of a hematological disorder and demonstrating pancytopenia in the peripheral blood smears were enrolled in the present study. All participants underwent a detailed history, clinical examination and investigations which included complete blood picture with red cell indices and peripheral smear, liver function test, renal function test, ultrasound abdomen and bone marrow examination in all cases. Cause of pancytopenia was ascertained and data was analysed on SPSS on the basis of etiology, clinical and haematological findings. The data generated from the present study concludes that systematic and thorough workup is required in patients presenting with pancytopenia, so that elimination of the cause is needed to treat the condition. Among them, megaloblastic anaemia and infections are early treatable and reversible. Keywords: Pancytopenia, Bone Marrow Aspiration, Megaloblastic Anemia, Hypo plastic Marrow, etc


2021 ◽  
Author(s):  
Kokou S. Dogbevi ◽  
Paul Gordon ◽  
Kimberly L. Branan ◽  
Bryan Khai D. Ngo ◽  
Kevin B. Kiefer ◽  
...  

Effective staining of peripheral blood smears which enhances the contrast of intracellular components and biomarkers is essential for the accurate characterization, diagnosis, and monitoring of various diseases such as malaria.


2002 ◽  
Vol 116 (3) ◽  
pp. 503-503 ◽  
Author(s):  
Glen A. Kennedy ◽  
Jennifer L. Curnow ◽  
Julie Gooch ◽  
Bronwyn Williams ◽  
Peter Wood ◽  
...  

2021 ◽  
pp. jclinpath-2021-207863
Author(s):  
Lisa N van der Vorm ◽  
Henriët A Hendriks ◽  
Simone M Smits

AimsRecently, a new automated digital cell imaging analyser (Sysmex CellaVision DC-1), intended for use in low-volume and small satellite laboratories, has become available. The purpose of this study was to compare the performance of the DC-1 with the Sysmex DI-60 system and the gold standard, manual microscopy.MethodsWhite blood cell (WBC) differential counts in 100 normal and 100 abnormal peripheral blood smears were compared between the DC-1, the DI-60 and manual microscopy to establish accuracy, within-run imprecision, clinical sensitivity and specificity. Moreover, the agreement between precharacterisation and postcharacterisation of red blood cell (RBC) morphological abnormalities was determined for the DC-1.ResultsWBC preclassification and postclassification results of the DC-1 showed good correlation compared with DI-60 results and manual microscopy. In addition, the within-run SD of the DC-1 was below 1 for all five major WBC classes, indicating good reproducibility. Clinical sensitivity and specificity were, respectively, 96.7%/95.9% compared with the DI-60% and 96.6%/95.3% compared with manual microscopy. The overall agreement on RBC morphology between the precharacterisation and postcharacterisation results ranged from 49% (poikilocytosis) to 100% (hypochromasia, microcytosis and macrocytosis).ConclusionsThe DC-1 has proven to be an accurate digital cell imaging system for differential counting and morphological classification of WBCs and RBCs in peripheral blood smears. It is a compact and easily operated instrument that can offer low-volume and small satellite laboratories the possibilities of readily available blood cell analysis that can be stored and retrieved for consultation with remote locations.


Blood ◽  
2020 ◽  
Vol 136 (Supplement 1) ◽  
pp. 45-46
Author(s):  
Christian Pohlkamp ◽  
Kapil Jhalani ◽  
Niroshan Nadarajah ◽  
Inseok Heo ◽  
William Wetton ◽  
...  

Background: Cytomorphology is the gold standard for quick assessment of peripheral blood and bone marrow samples in hematological neoplasms. It is a broadly-accepted method for orchestrating more specific diagnostics including immunophenotyping or genetics. Inter-/intra-observer-reproducibility of single cell classification is only 75 to 90%. Only a limited number of cells (100 - 500 cells/smear) is read in a time-consuming procedure. Machine learning (ML) is more reliable where human skills are limited, i.e. in handling large amounts of data or images. We here tested ML to differentiate peripheral blood leukocytes in a high throughput hematology laboratory. Aim: To establish an ML-based cell classifier capable of identifying healthy and pathologic cells in digitalized peripheral blood smear scans at an accuracy competitive with or outperforming human expert level. Methods: We selected &gt;2,600 smears out of our unique archive of &gt; 250,000 peripheral blood smears from hematological neoplasms. Depending on quality, we scanned up to 1,000 single cell images per smear. For image acquisition, a Metafer Scanning System (Zeiss Axio Imager.Z2 microscope, automatic slide feeder and automatic oiling device) from MetaSystems (Altlussheim, GER) was used. Areas of interest were defined by pre-scan in 10x magnification followed by high resolution scan in 40x to generate cell images for analysis. Average capture times for 300/500 cells were 3:43/4:37 min We set up a supervised ML-learning model using colour images (144x144 pixels) as input, outputting predicted probabilities of 21 predefined classes. We used ImageNet-pretrained Xception as our base model. We trained, evaluated and deployed the model using Amazon SageMaker on a subset of 82,974 images randomly selected from 514,183 cells captured and labelled for this study. 20 different cell types and one garbage class were classified. We included cell type categories referring to the critical importance of detecting rare leukemia subtypes (e.g. APL). Numbers of images from respective 21 classes ranged from 1,830 to 14,909 (median: 2,945). Minority classes were up-sampledto handle imbalances. Each picture was labelled by highly skilled technicians (median years practicing in this laboratory: 5) and two independent hematologists (median years at microscope: 20). Results: On a separate test set of 8,297 cells, our classifier was able to predict any of the five cell types occurring in the peripheral blood of healthy individuals (PMN, lymphocytes, monocytes, eosinophils, basophils) at very high median accuracy (97.0%) Median prediction accuracy of 15 rare or pathological cell types was 91.3%. For six critical pathological cell forms (myeloblasts, atypical/bilobulated promyelocytes in APL/APLv, hairy cells, lymphoma cells,plasma cells), median accuracy was 93.4% (sensitivity 93.8%). We saw a very high "T98 accuracy" for these cell types (98.5%) which is the accuracy of cell type predictions with prediction probability &gt;0.98 (achieved in 2231/2417 cases), implicating that critical cells predicted with probability &lt;0.98 should be flagged for human expert validation with priority. For all 21 classes median accuracy was 91.7%. Accuracy was lower for cells representing consecutive steps of maturation, e.g. promyelo-/myelo-/metamyelocytes, reproducing inconsistencies from the human-built phenotypic classification system (s.Fig.). Conclusions: We demonstrate an automated workflow using automatic microscopic cell capturing and ML-driven cell differentiation in samples of hematologic patients. Reproducibility, accuracy, sensitivity and specificity are above 90%, for many cell types above 98%. By flagging suspicious cells for humanvalidation, this tool can support even experienced hematology professionals, especially in detecting rare cell types. Given an appropriate scanning speed, it clearly outperforms human investigators in terms of examination time and number of differentiated cells. An ML-based intelligence can make its skills accessible to hematology laboratories on site or after upload of scanned cell images, independent of time/location. A cloud-based infrastructure is available. A prospective head to head challenge between ML-based classifier and human experts comparing sensitivity and accuracy for detection of all cell classes in peripheral blood will be tested to proof suitability for routine use (NCT 4466059). Figure Disclosures Heo: AWS: Current Employment. Wetton:AWS: Current Employment. Drescher:MetaSystems: Current Employment. Hänselmann:MetaSystems: Current Employment. Lörch:MetaSystems: Current equity holder in private company.


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