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Automated segmentation of ablated lesions using deep convolutional neural networks: A basis for response assessment following laser interstitial thermal therapy.

Publication ,  Journal Article
Haskell-Mendoza, AP; Reason, EH; Gonzalez, AT; Jackson, JD; Sankey, EW; Srinivasan, ES; Herndon, JE; Fecci, PE; Calabrese, E
Published in: Neuro Oncol
June 3, 2024

BACKGROUND: Laser interstitial thermal therapy (LITT) of intracranial tumors or radiation necrosis enables tissue diagnosis, cytoreduction, and rapid return to systemic therapies. Ablated tissue remains in situ, resulting in characteristic post-LITT edema associated with transient clinical worsening and complicating post-LITT response assessment. METHODS: All patients receiving LITT at a single center for tumors or radiation necrosis from 2015 to 2023 with ≥9 months of MRI follow-up were included. An nnU-Net segmentation model was trained to automatically segment contrast-enhancing lesion volume (CeLV) of LITT-treated lesions on T1-weighted images. Response assessment was performed using volumetric measurements. RESULTS: Three hundred and eighty four unique MRI exams of 61 LITT-treated lesions and 6 control cases of medically managed radiation necrosis were analyzed. Automated segmentation was accurate in 367/384 (95.6%) images. CeLV increased to a median of 68.3% (IQR 35.1-109.2%) from baseline at 1-3 months from LITT (P = 0.0012) and returned to baseline thereafter. Overall survival (OS) for LITT-treated patients was 39.1 (9.2-93.4) months. Lesion expansion above 40% from volumetric nadir or baseline was considered volumetric progression. Twenty-one of 56 (37.5%) patients experienced progression for a volumetric progression-free survival of 21.4 (6.0-93.4) months. Patients with volumetric progression had worse OS (17.3 vs 62.1 months, P = 0.0015). CONCLUSIONS: Post-LITT CeLV expansion is quantifiable and resolves within 6 months of LITT. Development of response assessment criteria for LITT-treated lesions is feasible and should be considered for clinical trials. Automated lesion segmentation could speed the adoption of volumetric response criteria in clinical practice.

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Published In

Neuro Oncol

DOI

EISSN

1523-5866

Publication Date

June 3, 2024

Volume

26

Issue

6

Start / End Page

1152 / 1162

Location

England

Related Subject Headings

  • Retrospective Studies
  • Prognosis
  • Oncology & Carcinogenesis
  • Neural Networks, Computer
  • Middle Aged
  • Male
  • Magnetic Resonance Imaging
  • Laser Therapy
  • Hyperthermia, Induced
  • Humans
 

Citation

APA
Chicago
ICMJE
MLA
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Haskell-Mendoza, A. P., Reason, E. H., Gonzalez, A. T., Jackson, J. D., Sankey, E. W., Srinivasan, E. S., … Calabrese, E. (2024). Automated segmentation of ablated lesions using deep convolutional neural networks: A basis for response assessment following laser interstitial thermal therapy. Neuro Oncol, 26(6), 1152–1162. https://doi.org/10.1093/neuonc/noad261
Haskell-Mendoza, Aden P., Ellery H. Reason, Ariel T. Gonzalez, Joshua D. Jackson, Eric W. Sankey, Ethan S. Srinivasan, James E. Herndon, Peter E. Fecci, and Evan Calabrese. “Automated segmentation of ablated lesions using deep convolutional neural networks: A basis for response assessment following laser interstitial thermal therapy.Neuro Oncol 26, no. 6 (June 3, 2024): 1152–62. https://doi.org/10.1093/neuonc/noad261.
Haskell-Mendoza AP, Reason EH, Gonzalez AT, Jackson JD, Sankey EW, Srinivasan ES, et al. Automated segmentation of ablated lesions using deep convolutional neural networks: A basis for response assessment following laser interstitial thermal therapy. Neuro Oncol. 2024 Jun 3;26(6):1152–62.
Haskell-Mendoza, Aden P., et al. “Automated segmentation of ablated lesions using deep convolutional neural networks: A basis for response assessment following laser interstitial thermal therapy.Neuro Oncol, vol. 26, no. 6, June 2024, pp. 1152–62. Pubmed, doi:10.1093/neuonc/noad261.
Haskell-Mendoza AP, Reason EH, Gonzalez AT, Jackson JD, Sankey EW, Srinivasan ES, Herndon JE, Fecci PE, Calabrese E. Automated segmentation of ablated lesions using deep convolutional neural networks: A basis for response assessment following laser interstitial thermal therapy. Neuro Oncol. 2024 Jun 3;26(6):1152–1162.
Journal cover image

Published In

Neuro Oncol

DOI

EISSN

1523-5866

Publication Date

June 3, 2024

Volume

26

Issue

6

Start / End Page

1152 / 1162

Location

England

Related Subject Headings

  • Retrospective Studies
  • Prognosis
  • Oncology & Carcinogenesis
  • Neural Networks, Computer
  • Middle Aged
  • Male
  • Magnetic Resonance Imaging
  • Laser Therapy
  • Hyperthermia, Induced
  • Humans