Machine Learning Radically Reduces Workload of Cell Counting for Disease Diagnosis
By LabMedica International staff writers Posted on 24 May 2022 |

Machine learning methods are increasingly spreading into the area of blood cell counting, until recently dominated by expensive and often less accurate traditional cell analyzers. However, due to the enormous amount of manual annotation work required, training the machine learning model has so far proven highly labor-intensive. Now, researchers have developed an innovative training method that automates much of this activity.
Researchers at Benihang University (Beijing, China) have developed the new scheme for training a convolutional neural network (CNN) - a type of machine learning that mirrors the connection structure of the human visual cortex. The number and type of cells in the blood often play a crucial role in disease diagnosis, but the cell analysis techniques commonly used to perform such counting of blood cells - involving the detection and measurement of physical and chemical characteristics of cells suspended in fluid - are expensive and require complex preparations. Worse still, the accuracy of cell analyzer machines is only about 90% due to various influences such as temperature, pH, voltage, and magnetic field that can confuse the equipment.
In order to improve accuracy, reduce complexity and lower costs, much research into alternatives has lately focused on the use of computer programs to perform “segmentation” on photographs of the blood taken by a high-definition camera connected to a microscope. Segmentation involves algorithms that perform pixel-by-pixel labeling of what appears in a photo, in this case, what parts of the image are cells and which are not - in essence, counting the number of cells in an image. For images in which only a single type of cell appears, such methods achieve a decent level of accuracy, but they perform poorly when confronting images with multiple types of cells. So in recent years, in attempts to solve the problem, researchers have turned to CNNs.
For the CNN to perform this task, it must first be “trained” to understand what is and is not a cell on many thousands of images of cells that humans have manually labeled. Then, when fed a novel, unlabelled image, it recognizes and can count the cells in it. The researchers at Beihang University developed a new scheme for training the CNN, in this case, U-Net, a fully convolutional network segmentation model that has been widely used in medical image segmentation since it was first developed in 2015. In the new training scheme, the CNN is first trained on a set of many thousands of images with only one type of cell (taken from the blood of mice).
These single-cell-type images are “preprocessed” automatically by conventional algorithms that reduce noise in the images, enhance their quality, and detect the contours of objects in the image. They then perform adaptive image segmentation. This latter algorithm calculates the various levels of gray in a black and white image, and if a part of the image lies beyond a certain threshold of gray, the algorithm segments that out as a distinct object. What makes the process adaptive is that rather than segmenting out parts of the image segments according to a fixed gray threshold, it does this according to the local features of the image.
After the single-cell-type training set is presented to the U-Net model, the model is fine-tuned using a small set of manually annotated images of multiple cell types. In comparison, a certain amount of manual annotation remains, and the number of images needed to be labeled by humans drops from what was previously many thousands to just 600. To test their training scheme, the researchers first used a traditional cell analyzer on the same mouse blood samples to do an independent cell count against which they could compare their new approach. They found that the accuracy of their training scheme on segmentation of multiple-cell-type images was 94.85%, which is the same level achieved by training with manually annotated multiple-cell-type images. The technique can also be applied to more advanced models to consider more complex segmentation problems. As the new training technique still involves some level of manual annotation, the researchers hope to go on to develop a fully automatic algorithm for annotating and training models.
Related Links:
Benihang University
Latest Hematology News
- Next Generation Instrument Screens for Hemoglobin Disorders in Newborns
- First 4-in-1 Nucleic Acid Test for Arbovirus Screening to Reduce Risk of Transfusion-Transmitted Infections
- POC Finger-Prick Blood Test Determines Risk of Neutropenic Sepsis in Patients Undergoing Chemotherapy
- First Affordable and Rapid Test for Beta Thalassemia Demonstrates 99% Diagnostic Accuracy
- Handheld White Blood Cell Tracker to Enable Rapid Testing For Infections
- Smart Palm-size Optofluidic Hematology Analyzer Enables POCT of Patients’ Blood Cells
- Automated Hematology Platform Offers High Throughput Analytical Performance
- New Tool Analyzes Blood Platelets Faster, Easily and Accurately
- First Rapid-Result Hematology Analyzer Reports Measures of Infection and Severity at POC
- Bleeding Risk Diagnostic Test to Reduce Preventable Complications in Hospitals
- True POC Hematology Analyzer with Direct Capillary Sampling Enhances Ease-of-Use and Testing Throughput
- Point of Care CBC Analyzer with Direct Capillary Sampling Enhances Ease-of-Use and Testing Throughput
- Blood Test Could Predict Outcomes in Emergency Department and Hospital Admissions
- Novel Technology Diagnoses Immunothrombosis Using Breath Gas Analysis
- Advanced Hematology System Allows Labs to Process Up To 119 Complete Blood Count Results per Hour
- Unique AI-Based Approach Automates Clinical Analysis of Blood Data
Channels
Clinical Chemistry
view channel
3D Printed Point-Of-Care Mass Spectrometer Outperforms State-Of-The-Art Models
Mass spectrometry is a precise technique for identifying the chemical components of a sample and has significant potential for monitoring chronic illness health states, such as measuring hormone levels... Read more.jpg)
POC Biomedical Test Spins Water Droplet Using Sound Waves for Cancer Detection
Exosomes, tiny cellular bioparticles carrying a specific set of proteins, lipids, and genetic materials, play a crucial role in cell communication and hold promise for non-invasive diagnostics.... Read more
Highly Reliable Cell-Based Assay Enables Accurate Diagnosis of Endocrine Diseases
The conventional methods for measuring free cortisol, the body's stress hormone, from blood or saliva are quite demanding and require sample processing. The most common method, therefore, involves collecting... Read moreMolecular Diagnostics
view channel
Unique Autoantibody Signature to Help Diagnose Multiple Sclerosis Years before Symptom Onset
Autoimmune diseases such as multiple sclerosis (MS) are thought to occur partly due to unusual immune responses to common infections. Early MS symptoms, including dizziness, spasms, and fatigue, often... Read more
Blood Test Could Detect HPV-Associated Cancers 10 Years before Clinical Diagnosis
Human papilloma virus (HPV) is known to cause various cancers, including those of the genitals, anus, mouth, throat, and cervix. HPV-associated oropharyngeal cancer (HPV+OPSCC) is the most common HPV-associated... Read moreImmunology
view channel
Diagnostic Blood Test for Cellular Rejection after Organ Transplant Could Replace Surgical Biopsies
Transplanted organs constantly face the risk of being rejected by the recipient's immune system which differentiates self from non-self using T cells and B cells. T cells are commonly associated with acute... Read more
AI Tool Precisely Matches Cancer Drugs to Patients Using Information from Each Tumor Cell
Current strategies for matching cancer patients with specific treatments often depend on bulk sequencing of tumor DNA and RNA, which provides an average profile from all cells within a tumor sample.... Read more
Genetic Testing Combined With Personalized Drug Screening On Tumor Samples to Revolutionize Cancer Treatment
Cancer treatment typically adheres to a standard of care—established, statistically validated regimens that are effective for the majority of patients. However, the disease’s inherent variability means... Read moreMicrobiology
view channel
Mouth Bacteria Test Could Predict Colon Cancer Progression
Colon cancer, a relatively common but challenging disease to diagnose, requires confirmation through a colonoscopy or surgery. Recently, there has been a worrying increase in colon cancer rates among younger... Read more.jpg)
Unique Metabolic Signature Could Enable Sepsis Diagnosis within One Hour of Blood Collection
Sepsis is a life-threatening condition triggered by an extreme response of the body to an infection. It requires immediate medical intervention to prevent potential death or lasting damage.... Read morePathology
view channel
Spatial Tissue Analysis Identifies Patterns Associated With Ovarian Cancer Relapse
High-grade serous ovarian carcinoma is the most lethal type of ovarian cancer, and it poses significant detection challenges. Typically, patients initially respond to surgery and chemotherapy, but the... Read more.jpg)
Unique Hand-Warming Technology Supports High-Quality Fingertip Blood Sample Collection
Warming the hand is an effective way to facilitate blood collection from a fingertip, yet off-the-shelf solutions often do not fulfill laboratory requirements. Now, a unique hand-warming technology has... Read moreTechnology
view channel
New Diagnostic System Achieves PCR Testing Accuracy
While PCR tests are the gold standard of accuracy for virology testing, they come with limitations such as complexity, the need for skilled lab operators, and longer result times. They also require complex... Read more
DNA Biosensor Enables Early Diagnosis of Cervical Cancer
Molybdenum disulfide (MoS2), recognized for its potential to form two-dimensional nanosheets like graphene, is a material that's increasingly catching the eye of the scientific community.... Read more
Self-Heating Microfluidic Devices Can Detect Diseases in Tiny Blood or Fluid Samples
Microfluidics, which are miniature devices that control the flow of liquids and facilitate chemical reactions, play a key role in disease detection from small samples of blood or other fluids.... Read more
Breakthrough in Diagnostic Technology Could Make On-The-Spot Testing Widely Accessible
Home testing gained significant importance during the COVID-19 pandemic, yet the availability of rapid tests is limited, and most of them can only drive one liquid across the strip, leading to continued... Read moreIndustry
view channel
ECCMID Congress Name Changes to ESCMID Global
Over the last few years, the European Society of Clinical Microbiology and Infectious Diseases (ESCMID, Basel, Switzerland) has evolved remarkably. The society is now stronger and broader than ever before... Read more
Bosch and Randox Partner to Make Strategic Investment in Vivalytic Analysis Platform
Given the presence of so many diseases, determining whether a patient is presenting the symptoms of a simple cold, the flu, or something as severe as life-threatening meningitis is usually only possible... Read more