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[Texture analysis of 3D models for the prediction of the grade of clear cell renal cell carcinoma of the kidney (pilot study)].
Konyshev, A V; Glybochko, P V; Butnaru, D V; Alyaev, Yu G; Sirota, E S; Chernenky, M M; Chernenky, I M; Fiev, D N; Proskura, A V; Adzhiev, A R; Amrakhov, S A; Izmailova, A A; Sarkisyan, I P; Alekseeva, M Yu; Gridin, V N; Bochkarev, P V; Kuznetsov, I A.
Affiliation
  • Konyshev AV; Institute of Urology and Reproductive Health, FGAOU VO I.M. Sechenov First Moscow State Medical University.
  • Glybochko PV; FGBU Center for Information Technologies in Design of the Russian Academy of Sciences, Odintsovo, Moscow Region, Russia.
  • Butnaru DV; Institute of Urology and Reproductive Health, FGAOU VO I.M. Sechenov First Moscow State Medical University.
  • Alyaev YG; FGBU Center for Information Technologies in Design of the Russian Academy of Sciences, Odintsovo, Moscow Region, Russia.
  • Sirota ES; Institute of Urology and Reproductive Health, FGAOU VO I.M. Sechenov First Moscow State Medical University.
  • Chernenky MM; FGBU Center for Information Technologies in Design of the Russian Academy of Sciences, Odintsovo, Moscow Region, Russia.
  • Chernenky IM; Institute of Urology and Reproductive Health, FGAOU VO I.M. Sechenov First Moscow State Medical University.
  • Fiev DN; FGBU Center for Information Technologies in Design of the Russian Academy of Sciences, Odintsovo, Moscow Region, Russia.
  • Proskura AV; Institute of Urology and Reproductive Health, FGAOU VO I.M. Sechenov First Moscow State Medical University.
  • Adzhiev AR; FGBU Center for Information Technologies in Design of the Russian Academy of Sciences, Odintsovo, Moscow Region, Russia.
  • Amrakhov SA; Institute of Urology and Reproductive Health, FGAOU VO I.M. Sechenov First Moscow State Medical University.
  • Izmailova AA; FGBU Center for Information Technologies in Design of the Russian Academy of Sciences, Odintsovo, Moscow Region, Russia.
  • Sarkisyan IP; Institute of Urology and Reproductive Health, FGAOU VO I.M. Sechenov First Moscow State Medical University.
  • Alekseeva MY; FGBU Center for Information Technologies in Design of the Russian Academy of Sciences, Odintsovo, Moscow Region, Russia.
  • Gridin VN; Institute of Urology and Reproductive Health, FGAOU VO I.M. Sechenov First Moscow State Medical University.
  • Bochkarev PV; FGBU Center for Information Technologies in Design of the Russian Academy of Sciences, Odintsovo, Moscow Region, Russia.
  • Kuznetsov IA; Institute of Urology and Reproductive Health, FGAOU VO I.M. Sechenov First Moscow State Medical University.
Urologiia ; (4): 105-112, 2023 Sep.
Article in Ru | MEDLINE | ID: mdl-37850289
ABSTRACT

AIM:

To evaluate the possibilities of textural analysis of 3D models in differentiating the degree of nuclear dysplasia of the clear cell renal cell carcinoma (ccRCC). MATERIALS AND

METHODS:

The specimens after surgical treatment of 190 patients with ccRCC were analyzed. In all cases, nephron-sparing surgery (NSS) was performed through laparoscopic access. The clinical characteristics were evaluated, including age, gender, tumor localization (side, surface and segments), absolute tumor volume, Charlson comorbidity index, body mass index, nephrometry scores (RENAL, PADOVA, C-index). Patients were divided into 2 groups. In group 1, there were 119 patients with the ccRCC of Grade 1 or 2, while group 2 consisted of 71 patients with ccRCC of Grade 3 and 4. All patients underwent 3D virtual planning of procedure using the 3D modeling program "Amira". At the first stage, two experienced radiologists performed manual segmentation of 3D models of kidney parenchyma tumors. At the second stage, the tumor shape was analyzed with a mathematical calculation of three indicators and more than 300 textural features of statistics of types 1-2 were extracted. Further, an intellectual analysis was carried out. For the evaluation of tumor grade according to Furman system, the classification problem was solved using the machine learning algorithm Stochastic Gradient Descent and cross-validation k=5.

RESULTS:

The accuracy of classification for the two groups of Grade 1 or 2 and Grade 3 or 4 on the F1 metric was 72.2. To build the model, the following parameters were selected the absolute tumor volume, the Charlson comorbidity index, "Energy", the first quartile and the second decile of the pixel intensity distribution.

CONCLUSION:

The texture analysis of 3D models for the prediction of Fuhrman grade in ccRCC demonstrated satisfactory quality for two groups of Grade 1 or 2 and Grade 3 or 4 nuclear dysplasia.
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Collection: 01-internacional Database: MEDLINE Main subject: Carcinoma, Renal Cell / Kidney Neoplasms Limits: Humans Language: Ru Journal: Urologiia Journal subject: UROLOGIA Year: 2023 Document type: Article
Search on Google
Collection: 01-internacional Database: MEDLINE Main subject: Carcinoma, Renal Cell / Kidney Neoplasms Limits: Humans Language: Ru Journal: Urologiia Journal subject: UROLOGIA Year: 2023 Document type: Article