AI-supported modified risk staging for multiple myeloma cancer useful in real-world scenario

Farswan, Akanksha ; Gupta, Anubha ; Gupta, Ritu ; Hazra, Saswati ; Khan, Sadaf ; Kumar, Lalit ; Sharma, Atul (2021) AI-supported modified risk staging for multiple myeloma cancer useful in real-world scenario Translational Oncology, 14 (9). p. 101157. ISSN 1936-5233

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Official URL: https://doi.org/10.1016/j.tranon.2021.101157

Related URL: http://dx.doi.org/10.1016/j.tranon.2021.101157

Abstract

Introduction: An efficient readily employable risk prognostication method is desirable for MM in settings where genomics tests cannot be performed owing to geographical/economical constraints. In this work, a new Modified Risk Staging (MRS) has been proposed for newly diagnosed Multiple Myeloma (NDMM) that exploits six easy-to-acquire clinical parameters i.e. age, albumin, β2-microglobulin (β2M), calcium, estimated glomerular filtration rate (eGFR) and hemoglobin. Materials and Methods: MRS was designed using a training cohort of 716 NDMM patients of our inhouse MM Indian (MMIn) cohort and validated on MMIn (n=354) cohort and MMRF (n=900) cohort. K-adaptive partitioning (KAP) was used to find new thresholds for the parameters. Risk staging rules, obtained via training a J48 classifier, were used to build MRS. Results: New thresholds were identified for albumin (3.6 g/dL), β2M (4.8 mg/L), calcium (11.13 mg/dL), eGFR (48.1 mL/min), and hemoglobin (12.3 g/dL) using KAP on the MMIn dataset. On the MMIn dataset, MRS outperformed ISS for OS prediction in terms of C-index, hazard ratios, and its corresponding p-values, but performs comparable in prediction of PFS. On both MMIn and MMRF datasets, MRS performed better than RISS in terms of C-index and p-values. A simple online tool was also designed to allow automated calculation of MRS based on the values of the parameters. Discussion: Our proposed ML-derived yet simple staging system, MRS, although does not employ genetic features, outperforms RISS as confirmed by better separability in KM survival curves and higher values of C-index on both MMIn and MMRF datasets.

Item Type:Article
Source:Copyright of this article belongs to Elsevier Science.
Keywords:Machine Learning; Risk Stratification of Multiple Myeloma; J48 Decision Tree; BIRCH Clustering; Hazard Ratios; Hematological Malignancy
ID Code:142264
Deposited On:22 Jan 2026 06:12
Last Modified:22 Jan 2026 06:12

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