We use cookies to understand how you use our site and to improve your experience. This includes personalizing content and advertising. To learn more, click here. By continuing to use our site, you accept our use of cookies. Cookie Policy.

LabMedica

Download Mobile App
Recent News Expo Clinical Chem. Molecular Diagnostics Hematology Immunology Microbiology Pathology Technology Industry Focus

Machine Learning Model Calculates Chemotherapy Success in Patients with Bone Cancer

By LabMedica International staff writers
Posted on 04 Jan 2024
Print article
Image: A microscopic image of intramedullary osteosarcoma (Photo courtesy of Johns Hopkins Medicine)
Image: A microscopic image of intramedullary osteosarcoma (Photo courtesy of Johns Hopkins Medicine)

The calculation of Percent Necrosis (PN) — the proportion of a tumor considered inactive or "dead" following chemotherapy — serves as a vital predictor of survival outcomes in osteosarcoma, a type of bone cancer. For instance, a PN of 99% signifies that 99% that the tumor is dead, indicating the patient's positive response to chemotherapy and potentially better survival prospects. Pathologists typically assess PN by meticulously examining, interpreting, and marking up whole-slide images (WSIs), which are detailed cross-sections of specimens (like bone tissue) prepared for microscopic examination. Nevertheless, this traditional method is not only time-consuming and demands specialized expertise but also suffers from significant variability among observers. This means two pathologists might report differing PN estimates from the same WSI. Now, a machine learning model created and trained to calculate PN has shown that its calculation was 85% correct when compared to the results of a musculoskeletal pathologist, with the accuracy improving to 99% upon excluding an outlier.

A research team at Johns Hopkins Medicine (Baltimore, MD, USA) is developing a "weakly supervised" machine learning model, one that doesn't require extensive annotated data for training. By doing so, a pathologist would only need to provide partially annotated WSIs, significantly easing their workload. To develop the machine learning model, the team began by collecting WSIs from patients with intramedullary osteosarcoma (originating within the bone) treated with chemotherapy and surgery between 2011 to 2021. A musculoskeletal pathologist then partially labeled three tissue types on these WSIs: active tumor, dead tumor, and non-tumor tissue and also provided a PN estimate for each case. This data formed the foundation for the model's training.

The model was trained to recognize and categorize image patterns. The WSIs were segregated into thousands of smaller patches, divided into groups as per the pathologist's labels, and then fed into the model. This process aimed to provide the model a more robust frame of reference rather than just feeding it one large WSI. Upon completion of the training, the model was tested alongside the musculoskeletal pathologist on six WSIs from two patients. The results demonstrated an 85% correlation in PN calculations and tissue labeling between the model and the pathologist. However, the model struggled to accurately label cartilage, leading to an outlier as a result of an abundance of cartilage on one WSI. When this outlier was removed, the correlation soared to 99%. Future work will focus on incorporating cartilage tissue in the model's training and broadening the WSIs range to encompass various osteosarcoma types, not just intramedullary.

“If this model were to be validated and produced, it could help expedite the evaluation of chemotherapy’s effectiveness on a patient — and thus, get them a prognosis estimate sooner,” said Christa LiBrizzi, M.D., co-first author of the study and a resident with Johns Hopkins Medicine’s Department of Orthopedic Surgery. “That would reduce health care costs, as well as labor burdens on musculoskeletal pathologists.”

Related Links:
Johns Hopkins Medicine

New
Gold Member
Rotavirus Test
Rotavirus Test - 30003 – 30073
Verification Panels for Assay Development & QC
Seroconversion Panels
New
Mycoplasma Pneumoniae Virus Test
Mycoplasma Pneumoniae Virus Detection Kit
New
Community-Acquired Pneumonia Test
RIDA UNITY CAP Bac

Print article

Channels

Molecular Diagnostics

view channel
Image: The study investigated D-dimer testing in patients who are at higher risk of pulmonary embolism (Photo courtesy of Adobe Stock)

D-Dimer Testing Can Identify Patients at Higher Risk of Pulmonary Embolism

Pulmonary embolism (PE) is a commonly suspected condition in emergency departments (EDs) and can be life-threatening if not diagnosed correctly. Achieving an accurate diagnosis is vital for providing effective... Read more

Immunology

view channel
Image: The findings were based on patients from the ADAURA clinical trial of the targeted therapy osimertinib for patients with NSCLC with EGFR-activated mutations (Photo courtesy of YSM Multimedia Team)

Post-Treatment Blood Test Could Inform Future Cancer Therapy Decisions

In the ongoing advancement of personalized medicine, a new study has provided evidence supporting the use of a tool that detects cancer-derived molecules in the blood of lung cancer patients years after... Read more

Microbiology

view channel
Image: Schematic representation illustrating the key findings of the study (Photo courtesy of UNIST)

Breakthrough Diagnostic Technology Identifies Bacterial Infections with Almost 100% Accuracy within Three Hours

Rapid and precise identification of pathogenic microbes in patient samples is essential for the effective treatment of acute infectious diseases, such as sepsis. The fluorescence in situ hybridization... Read more
Sekisui Diagnostics UK Ltd.