TY - JOUR
T1 - Machine Learning to Predict Interim Response in Pediatric Classical Hodgkin Lymphoma Using Affordable Blood Tests
AU - the South African Children’s Cancer Study Group
AU - Geel, Jennifer A.
AU - Hramyka, Artsiom
AU - du Plessis, Jan
AU - Goga, Yasmin
AU - Van Zyl, Anel
AU - Hendricks, Marc G.
AU - Naidoo, Thanushree
AU - Mathew, Rema
AU - Louw, Lizette
AU - Carr, Amy
AU - Neethling, Beverley
AU - Schickerling, Tanya M.
AU - Omar, Fareed
AU - Du Plessis, Liezl
AU - Madzhia, Elelwani
AU - Netshituni, Vhutshilo
AU - Eyal, Katherine
AU - Ngcana, Thandeka V.Z.
AU - Kelsey, Tom
AU - Ballott, Daynia E.
AU - Metzger, Monika L.
AU - Stones, David
AU - Cockroft, Ruellyn
AU - Davidson, Alan
AU - Andrade, Anabela
AU - Buchner, Ane
AU - Van Eyssen, Ann
AU - van Emmenes, Barry
AU - Rowe, Biance
AU - Stannard, Clare
AU - Stefan, Cristina
AU - Reynders, David
AU - MacKinnon, Diane
AU - Mathews, Elmarie
AU - Desai, Farieda
AU - Steytler, Gesami
AU - Naidu, Gita
AU - Poole, Janet
AU - Parkes, Jeanette
AU - Vermeulen, Johani
AU - Lecuona, Karin
AU - Thomas, Karla
AU - Bennett, Kate
AU - Reddy, Kershinee
AU - Moodley, Keshnie
AU - Pillay, Komala
AU - Kruger, Mariana
AU - van Heerden, Jaques
AU - Wainwright, Linda
AU - Schoonraad, Leila
N1 - Publisher Copyright:
© 2024 by American Society of Clinical Oncology.
PY - 2024/10/1
Y1 - 2024/10/1
N2 - PURPOSE Response assessment of classical Hodgkin lymphoma (cHL) with positron emission tomography-computerized tomography (PET-CT) is standard of care in well-resourced settings but unavailable in most African countries. We aimed to investigate correlations between changes in PET-CT findings at interim analysis with changes in blood test results in pediatric patients with cHL in 17 South African centers. METHODS Changes in ferritin, lactate dehydrogenase (LDH), erythrocyte sedimentation rate (ESR), albumin, total white cell count (TWC), absolute lymphocyte count (ALC), and absolute eosinophil count were compared with PET-CT Deauville scores (DS) after two cycles of doxorubicin, bleomycin, vinblastine, and dacarbazine in 84 pediatric patients with cHL. DS 1-3 denoted rapid early response (RER) while DS 4-5 denoted slow early response (SER). Missing values were imputed using the k-nearest neighbor algorithm. Baseline and follow-up blood test values were combined into a single difference variable. Data were split into training and testing sets for analysis using Python scikit-learn 1.2.2 with logistic regression, random forests, naïve Bayes, and support vector machine classifiers. RESULTS Random forest analysis achieved the best validated test accuracy of 73% when predicting RER or SER from blood samples. When applied to the full data set, the optimal model had a predictive accuracy of 80% and a receiver operating characteristic AUC of 89%. The most predictive variable was the differences in ALC, contributing 21% to the model. Differences in ferritin, LDH, and TWC contributed 15%-16%. Differences in ESR, hemoglobin, and albumin contributed 11%-12%. CONCLUSION Changes in low-cost, widely available blood tests may predict chemosensitivity for pediatric cHL without access to PET-CT, identifying patients who may not require radiotherapy. Changes in these nonspecific blood tests should be assessed in combination with clinical findings and available imaging to avoid undertreatment.
AB - PURPOSE Response assessment of classical Hodgkin lymphoma (cHL) with positron emission tomography-computerized tomography (PET-CT) is standard of care in well-resourced settings but unavailable in most African countries. We aimed to investigate correlations between changes in PET-CT findings at interim analysis with changes in blood test results in pediatric patients with cHL in 17 South African centers. METHODS Changes in ferritin, lactate dehydrogenase (LDH), erythrocyte sedimentation rate (ESR), albumin, total white cell count (TWC), absolute lymphocyte count (ALC), and absolute eosinophil count were compared with PET-CT Deauville scores (DS) after two cycles of doxorubicin, bleomycin, vinblastine, and dacarbazine in 84 pediatric patients with cHL. DS 1-3 denoted rapid early response (RER) while DS 4-5 denoted slow early response (SER). Missing values were imputed using the k-nearest neighbor algorithm. Baseline and follow-up blood test values were combined into a single difference variable. Data were split into training and testing sets for analysis using Python scikit-learn 1.2.2 with logistic regression, random forests, naïve Bayes, and support vector machine classifiers. RESULTS Random forest analysis achieved the best validated test accuracy of 73% when predicting RER or SER from blood samples. When applied to the full data set, the optimal model had a predictive accuracy of 80% and a receiver operating characteristic AUC of 89%. The most predictive variable was the differences in ALC, contributing 21% to the model. Differences in ferritin, LDH, and TWC contributed 15%-16%. Differences in ESR, hemoglobin, and albumin contributed 11%-12%. CONCLUSION Changes in low-cost, widely available blood tests may predict chemosensitivity for pediatric cHL without access to PET-CT, identifying patients who may not require radiotherapy. Changes in these nonspecific blood tests should be assessed in combination with clinical findings and available imaging to avoid undertreatment.
UR - http://www.scopus.com/inward/record.url?scp=85207327028&partnerID=8YFLogxK
U2 - 10.1200/GO.23.00435
DO - 10.1200/GO.23.00435
M3 - Article
C2 - 39447089
AN - SCOPUS:85207327028
SN - 2378-9506
VL - 10
JO - JCO Global Oncology
JF - JCO Global Oncology
M1 - e2300435
ER -