Issue 1 (195), article 6

DOI:https://doi.org/10.15407/kvt195.01.082

Kibern. vyčisl. teh., 2018, Issue 1 (195), pp.

CHERNYSHOVA T.A., physician,
e-mail: tetyana.che@gmail.com

Aviation Medical Center of the National Aviation University,
Komarova av., 1, Kyiv, 03058, Ukraine

CRITERIA AND METHOD FOR DETECTION OF CIRCULATING TUMOR CELLS

Introduction. Modern advances in science and technology have substantially expanded the possibilities for detecting malignant neoplasms. A great number of methods for the detection and allocation of circulating tumor cells clearly indicates the interest of researchers to this problem.
The purpose of the work is to form a complex of criteria for tumor malignancy evaluation and to improve the method of detecting circulating tumor cells in human blood.
Results. The proposed method for determining circulating tumor cells, which is an improvement of ISET technology, combines two stages. At the first stage the improvement is in adding two additional polycarbonate filters with 5 and 3 micron diameter pores, and providing a mode of 100% sealing of the chamber with hemolysis, and constant pressure throughout the filtration process. At the second stage, we carried out the determination of malignancy degree of the isolated cells using the developed set of criteria. The use of the developed method in the automated system for the analysis of digital microscopic images of circulating tumor cells provides the detection and calculation of characteristic features for assigning an object to a certain class of malignancy and the creation of scanned images database with recorded existing cells or their entities, as well as the final verification of the results of tumor malignancy evaluation for template masks of circulating tumour cells and benign tumor cells.
Conclusions. The application of the proposed method for the detection of circulating tumor cells allows detecting smaller cells than in case of using traditional methods, ensures their integrity and intactness.

Keywords: circulating tumor cells, criteria for evaluation of tumormalignancy, method of determining circulating tumor cells in human blood.

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REFERENCES

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  1. Tewes M., Aktas В., Welt A., Mueller S., Hauch S., Kimmig R., Kasimir-Bauer S. Molecular profiling and predictive value of circulating tumor cells in patients with metastatic breast cancer: an option for monitoring response to breast cancer related therapies. Breast cancer research and treatment. 2009. V. 115, N 3. P. 581-590.
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Received 26.12.2018

Issue 1 (195), article 5

DOI:https://doi.org/10.15407/kvt195.01.064

Kibern. vyčisl. teh., 2018, Issue 1 (195), pp.

KAPLIN I.V.1, ophthalmologist of the Kyiv Center for Eye Therapy and Microsurgery, PhD student of the Ophthalmology Department
e-mail: smashdown@mail.ru

KOCHINA M.L.2, DSc. (Biology), Professor,
Head of the Medical and Biological Basics of Sports and Physical Rehabilitation Department,
e-mail: kochinaml@gmail.com

DEMIN Iu.A.1, DSc. (Medicine), Professor,
Head of Ophthalmology Department,
e-mail: deminprof@gmail.com

FIRSOV O.H.3, PhD (Technics), Chief Designer
e-mail: shagrath.hire@gmail.com

1 Kharkiv Medical Academy of Postgraduate Education,
58, Amosova str., Kharkiv, Ukraine, 61000

2 Petro Mohyla Black Sea National University
10, 68-Desantniv str., Mykolaiv, Ukraine, 54000

3 ASTER-AITI, LTD
1, Aviation str., ap.7, Kharkiv, Ukraine, 61166

THE SYSTEM OF INTRAOCULAR PRESSURE ASSESSMENT USING INTERFERENCE EYE PICTURES

Introduction. According to the World Health Organization (WHO), glaucoma accounts for 4–5% of the total ocular pathology, making it one of the most common eye diseases in the world. The first sign of the disease is a constant or periodic increase in intraocular pressure, which leads to the development of visual field defects, optic nerve atrophy, and dystrophic changes in eye tissues. Detection of glaucoma and ocular hypertension is done by measuring the intraocular pressure, which is the standard procedure for diagnosis of the condition of eyes in all patients over 40 years of age. Patients with a diagnosis of “glaucoma” should constantly measure the intraocular pressure, which is necessary to control the effectiveness of treatment, its correction and evaluation of the effectiveness of drugs.
The purpose of the article is to develop the system for assessing the intraocular pressure level using the interference pictures parameters observed on the eye cornea in the polarized light.
Results. The proposed system of two-level classification of the intraocular pressure level, which contains a pair of complementary fuzzy models, formalized in the form of logical rules and sets of numerical parameters of functions (membership and conclusion), and additional decisive rules that consist of a regression equation and a classification criterion.
Such a hybrid system adequately reflects the general communication of adjusted interference picture parameters with a measured value of intraocular pressure by classical Goldman tonometry, which allowed offering it to practical use as a basis for intraocular pressure express assessment.
Conclusion. Using the developed software module evaluation of intraocular pressure, based on the proposed concept of express assessment of intraocular pressure, integrates fuzzy models and decisive rules allowing to improve the results of glaucoma treatment at early detection of high level of intraocular pressure.

Keywords: intraocular pressure, central eye cornea thickness, interference pictures, express assessment.

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REFERENCES

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    J Natl Med Assoc .2011. Vol. 103. Р. 332–341.
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  7. Povch Z.V. Contemporary regional features and dynamics of glaucoma morbidity of adult population of Ukraine, gender aspects. Health of Society. 2014.1 2. P. 36–40. (in Ukrainian)
  8. Povch Z.V. Approaches to improving the glaucoma prevention taking into account the regional peculiarities of its prevalence among different age groups of the population of Ukraine. Health of Society. 2014. 1–2. P. 79. (in Ukrainian)
  9. Rykov S.O. Medvedovskaya N.V., Troyanov D.P. Current state and dynamics of glaucoma incidence among adult population of Ukraine. Ukraine. The health of the Nation. 2012. 2–3. P. 119–121. (in Ukrainian)
  10. Rykov S.A., Shargorodskaya I.V., I.I. bakdardin, Simchuk I.V. Diagnosis and treatment of glaucoma. Supplement to lectures; ed. S.O. Rykova. [2nd ed.]. K.: LLC “Firm ASAVA”, 2014. 72p. (in Russian)
  11. Kaplin I.V., Kochina M.L., Demin Y.A., Firsov A.G. The conception of telemedicine system for express estimation of intraocular pressure’s level. Cybernetics and Computer Engineering. 2018. № 1 (191). P. 76–94. (in Ukrainian)
  12. Brandt J. D., Gordon М.О., Beіser J. A. The Ocular Hypertensіon Treatment Study (OHTS) Group. Adjusting Intraocular Pressure for Central Corneal Thіckness Does Not Improve Prediction Models for Primary Open-Angle Glaucoma .Ophthalmol. 2012. Vol. 119(3). P. 437–442.
  13. Egorov E.A., Vasina M.V. The influence of the cornea thickness on the level of intraocular pressure among various groups of patients. Clinical Ophthalmology. 2006. No. 1. P. 16–19. (in Russian)
  14. Eremina M.V., Erichev V.P., Yakubova L.V. The influence of the central thickness of the cornea on the level within the eye pressure is normal and with glaucoma (overview). Glaucoma. 2006. No. 4. P. 78–83. (in Russian)
  15. Alekseev V. N., Litvin I. B. The influence of corneal thickness on the level of intraocular pressure and prognosis in primary open-angle glaucoma. Clinical ophthalmol. 2008. No. 4. P. 130–132. (in Russian)
  16. Avetisov S.E., Petrov S.Yu., Bubnov I.A. Influence of the central cornea thickness on the results of tonometry (review of literature). Vestn. Ophthalmol. 2008. No. 5. P. 3–7. (in Russian)
  17. Kochina M.L., Demin Y.A., Kaplin I.V., Kovtun N.M. Model of stress-deformation status of the eye corneaEast European Scientific Journal. 2017. 2(18). P. 61–66.
  18. Shtovba S.D. Designing fuzzy systems by means of MATLAB. Horiachaia liniia — Telecom. M., 2007. 288p with pictures. (in Russian)
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Received 03.12.2018

Issue 1 (195), article 4

DOI:https://doi.org/10.15407/kvt195.01.049

Kibern. vyčisl. teh., 2018, Issue 1 (195), pp.

MILIAVSKYI Yu.L., Senior Lecturer,
Department of the Mathematical Methods of System Analysis
e-mail: yuriy.milyavsky@gmail.com

National Technical University of Ukraine “I. Sikorsky Kyiv Polytechnic Institute”
37 Peremohy av., Kyiv, 03056, Ukraine

IDENTIFICATION IN COGNITIVE MAPS IN IMPULSE PROCESS MODE WITH INCOMPLETE MEASUREMENT OF NODES COORDINATES

Introduction. Cognitive map is a popular way of modeling complex multivariate systems. Usually weights coefficients of edges connecting the cognitive map nodes are suggested by experts. But such a method is always inaccurate. In case when nodes coordinates are measured, there is the possibility for mathematical identification of these coefficients. However, the issue is that often not all nodes coordinates of a cognitive map are measured, but only a few of them. In this case the problem of identification is much more complicated.
The purpose of the article is to research and develop a method for identifying weights of cognitive map nodes in case when number of nodes is known, but not all of them are measured.
Results. Identification method based on 4SID method is suggested. It allows finding some realization of the system equivalent to the original cognitive map in its outputs, with the control observation matrices remaining unchanged.Invariants of the original and identified systems are analyzed. Practical example of identifying a cognitive map of an IT company is considered. It is shown what the accuracy of the suggested method depends on and under which conditions it is applicable.
Conclusions. As demonstrated in the research, the proposed method of identifying cognitive maps achieves almost full coincidence of measured coordinates between the original and the identified systems, although the incidence matrices themselves may not be equal. Invariants of the system, specifically eigenvalues, are identified with sufficient precision if the problem is well-conditioned, i.e. with sufficient number of measurable coordinates, sufficient number of measurement periods and low level of measurement noise. If these conditions are not fulfilled, the identification results become incorrect.

Keywords: cognitive map, identification, 4SID method, unmeasurable coordinates.

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REFERENCES

  1. Roberts F. Discrete Mathematical Models with Applications to Social, Biological, and Environmental Problems. Englewood Cliffs: Prentice-Hall, 1976. 559p.
  2. V. Gubarev, V. Romanenko, Y. Milyavsky. Identification in cognitive maps in the impulse process mode with full information.Problems of control and informatics. 2018.
    № 4. P. 30–43 (in Russian).
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  4. V. Romanenko, Y. Milyavsky, M. Polyakov, Y. Letser, G. Shevchenko. Research of scenarios of IT company development based on decision-making in cognitive maps impulse process control mode. Proceedings of 1st international scientific and practical
    forum “Science and business”
    . (29-30 of June, 2015, Dnipropetrovsk), Dnipropetrovsk, 2015. P. 233–237.2015. P. 233–237.

Recieved 27.11.2018

Issue 1 (195), article 3

DOI:https://doi.org/10.15407/kvt195.01.036

Kibern. vyčisl. teh., 2018, Issue 1 (195), pp.

Yefymenko M.V., PhD.,
associate professor of Zaporizhzhya National Technical University,
Chief Designer
e-mail: nefimenko@gmail.com

Scientific Production Enterprise “HARTRON-YUKOM”
Soborny аv., 166, Zaporozhye, 69035, Ukraine

SOLUTION OF THE PROBLEMS OF CONTROLLING THE MOTION OF A POINT ON A SPHERE

Introduction. There are a number of control objects, the movement of which in space can be interpreted as the movement of a point along a sphere of a given radius. As an example of such a motion, the angular motion of a spacecraft can be considered. Using the orientation quaternion and its derivative to describe the angular motion of a spacecraft, the angular motion can be represented as the motion of a point along a unit sphere in R4.

While controlling such objects, the methods for solving the basic problems of controlling the motion of a point along the unit sphere in the Rn space are of interest.

The purpose of the article is to build the following algorithms for controlling the motion of a point along the sphere:
–                algorithm of a point motion stabilization with respect to program trajectory;
–                algorithm of a point relocation from the current position to a specified position in minimum time;
–                algorithm of a point relocation from the current position to a specified position in fixed time.
Results. The methods for solving the various problems of controlling the motion of a point along the sphere have been proposed.

Conclusion. On the basis of main properties of point along the sphere movement, the methods for solving the problems of controlling the motion of a point along the unit sphere in n-dimensional space have been proposed. Using the proposed methods, the solutions for the following control tasks have been found:
–     problems of stabilizing the motion of a point along the sphere with respect to program trajectory;
–     speed problems taking place when a point moves on along the sphere;
–     problems of a point on the sphere relocation from the current position to a specified position in fixed time.
The efficiency of the proposed algorithms has been demonstrated on the example of spacecraft angular motion control. The results obtained can be applicable in the development of various control systems, the spacecraft angular motion control systems in particular.

Keywords: sphere, control, point projection, quaternion.

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REFERENCES

  1. Kirichenko N.V., Matvienko V.T. Algorithms of asymptotic terminal and adaptive stabilization of the rotational motions of a rigid body. Problems of Control and Informatics. 2003. No 1. P. 5–15. (in Russian).
  2. Kirichenko N.F., Lepekha N.P. Perturbation of pseudoinverse and projection matrices and their application to the identification of linear and nonlinear dependencies. Problems of Control and Computer Science. 2001. № 1. P. 6–22.
  3. Kirichenko N.F., Lepekha N.P. Pseudo-inversion in control and observation problems. Automation. 1993. № 5. P. 69–81.
  4. Kirichenko N.F., Matvienko V.T. Optimal synthesis of structures for linear systems. Problems of Control and Informatics. 1996. № 1–2. P. 162–171.
  5. Yefimenko N.V. Mathematical model of the angular motion of the spacecraft in the parameters of Rodrigues-Hamilton and its properties. Electronic modeling. 2018.
    Vol. 40. No 6. Р. 21–36 (in Russian).
  6. Quakernaak X., Sivan R. Linear optimal control systems. Moscow: Mir, 1977. 650 p.
    (in Russian).
  7. Yefimenko N.V. Synthesis of the space-optimal time-reversal of a spacecraft using the dynamic equation of the rotational motion of a rigid body in the Rodrig Hamilton parameters. Problems of Control and Computer Science. 2017. No 3. P. 109-128. (in Russian).
  8. Yefimenko N.V. Synthesis of spacecraft reorientation control algorithms using the dynamic equations of the rotational motion of a rigid body in the Rodrig Hamilton parameters. Problems of Control and Computer Science. 2015. No 3. P. 145-155.
    (in Russian).

Received 27.11.2018

Issue 1 (195), article 2

DOI:https://doi.org/10.15407/kvt195.01.023

Kibern. vyčisl. teh., 2018, Issue 1 (195), pp.

SUKHORUCHKINA O.N., Senior Researcher,
Department of System Information Technologies
e-mail: sukhoru@irtc.org.ua

PROGONNYI N.V., Researcher,
Department of System Information Technologies
e-mail: progonny@gmail.com

International Research and Training Center
for Information Technologies and Systems
of the National Academy of Sciences of Ukraine
and Ministry of Education and Science of Ukraine
Acad. Glushkov av., 40, Kiev, 03187, Ukraine

THE INFORMATION TECHNOLOGY FOR REMOTE AND VIRTUAL PRACTICAL RESEARCHES ON ROBOTICS

Introduction. The problem of timely updating of laboratory means for research and training in robotics and intelligent technologies is considered. The information technology is proposed for organization of the laboratory complex with two types of components — remotely controlled robotics equipment and virtual means for corresponding practical research. Today, such approaches are the most optimal for providing research and training processes with modern resources for acquiring practical experience in rapidly developing scientific fields.

The purpose of the article is to consider the information technology capabilities in the organization of remote access to physical equipment and virtual means for practical research and training on robotics.

Methods. Methods of distributed information and computing processes, communication protocols, and web application programming are used.

Results. Two types of specialized means of our laboratory complex — physical equipment with remote access and virtual environments are considered. The general structures of autonomous mobile robot and sensor module that can be used remotely for certain research and practical training are presented. Some examples of web applications that are intended to familiarize students with certain types of robotics systems by their 3D models and to perform corresponding practical tasks with the automatic results checking are shown.

Conclusion. The use of the laboratory complex components according to the created technology leads to timely expansion of the resources for the state-of-the-art research and practical training on robotics or intelligent technologies by the students of many Ukraine technical universities.

Keywords: robotics, remote control technology, virtual laboratory, web applications.

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REFERENCES

  1. Guimarães E., Maffeis A., Pereira J., Russo B., Cardozo E., Bergerman M. REAL: A virtual laboratory for mobile robot experiments. IEEE Transactions on Education. 2003. Vol. 46. No. 1. P. 37–42.
  2. Trukhin A.V. Ispol’zovanie virtual’nykh laboratoriy v obrazovanii, Otkrytoe i distantsionnoe obrazovanie. 2002. № 4 (8). P. 67–69.
  3. Tzafestas C.S., Palaiologou N. Virtual and remote robotic laboratory: comparative experimental evaluation. IEEE Transactions on Education. 2006. Vol. 49. No. 3. P. 360–369.
  4. Chaos D., Chac´on J., Lopez-Orozco J.A., Dormido S. Virtual and remote robotic laboratory using EJS. MATLAB and LabVIEW. Sensors. 2013. No. 13. P. 2595–2612.
  5. Candelas F.A., Puente S.T., Torres F., Ortiz F.G., GIL P. Pomares J. A Virtual Laboratory for Tea-ching Robotics. International Journal of Engineering Education. 2003. Vol. 19. No. 3. P. 363–370.
  6. Sukhoruchkina O.N. The structures and information processes of mobile robot intelligent control. Zbіrnyk naukovykh prats Instytutu problem modelyuvannya v energetytsi іm. G.Ye. Pukhova NAN Ukrainy. Kyiv, 2012. No. 62. P. 93–101.
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  8. Sukhoruchkina O.N., Progonnyi N.V., Voronov M.A. Interpretation and use of the rangefinder measurements in the autonomous mobile robot control problems. USiM. 2017. No. 1. P. 26–34.
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Resieved 29.11.2018

Issue 1 (195), article 1

DOI:https://doi.org/10.15407/kvt195.01.005

Kibern. vyčisl. teh., 2018, Issue 1 (195), pp.

Gritsenko V.I., Corresponding Member of NAS of Ukraine,
Director of International Research and Training
Center for Information Technologies and Systems
of the National Academy of Sciences of Ukraine
and Ministry of Education and Science of Ukraine
e-mail: vig@irtc.org.ua

Volkov O.Ye., Acting Head of Department,
Intelligent Control Department,
e-mail: alexvolk@ukr.net

Komar M.M., Researcher,
Intelligent Control Department,
e-mail: nickkomar08@gmail.com

Shepetukha Yu.M., PhD (Engineering)
Leading Researcher,
Intelligent Control Department,
e-mail: dep185@irtc.org

Voloshenyuk D.O., Researcher,
Intelligent Control Department,
e-mail: dep185@irtc.org

International Research and Training Center for Information Technologies
and Systems of the National Academy of Sciences of Ukraine
and Ministry of Education and Science of Ukraine,
Acad. Glushkov av., 40, Kiev, 03187, Ukraine

INTEGRAL-ADAPTIVE AUTOPILOT AS A MEANS OF INTELLECTUALIZING A MODERN UNMANNED AERIAL VEHICLE

Introduction. At present unmanned aerial vehicles (UAVs) are successfully used in various industries in performing scientific and engineering, economical, military and a number of other missions. Effectiveness of their functioning is mainly determined by an onboard suit of hardware and software of a UAV’s control system. The process of the existing autopilot systems enhancement is intended to broaden the range of UAV’s tasks without direct human involvement and introduce additional smart functions into autopilot operation.

Purpose. The aim of research is to study the modern algorithms used in autopilots of unmanned aerial vehicles and formulation of the problem of development and usage of new intellectual methods for automatic control systems.

Results. The approach considered in the article is based on the theory of high-precision remote control of dynamic objects and on the complex interaction of methods of theory of invariance, adaptive control and intellectualization of processes of UAV control.

One of the features of the proposed method of intellectual control for unmanned aerial vehicle autopilot is the procedure of transforming a multi-dimensional system into an aggregate of virtual autonomous processes, for each of which the control algorithm is easily generated by an autonomous subsystem. Coming up next is the procedure of coordination of actions of all the autonomous systems into single functioning complex. This provides an opportunity to improved precision and sustainability of control.

Conclusion. Using the method described in the article allows creating integral and adaptive autopilots to perform complicated spatial maneuvering an unmanned aerial vehicle being based on usage of full non-linear models without simplifications and linearization.

Keywords: unmanned aerial vehicle, control system, virtual control, adaptation invariance.

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REFERENCES

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Received 19.11.2018

Issue 1 (195)

DOI:https://doi.org/10.15407/kvt195.01

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TABLE OF CONTENTS:

Informatics and Information Technologies:
Gritsenko V.I., Volkov O.Ye., Komar M.M., Shepetukha Yu.M., Voloshenyuk D.O.
Integral-Adaptive Autopilot as a Means of Intellectualizing
a Modern Unmanned Aerial Vehicle

Sukhoruchkina O.N., Progonnyi N.V.
The Information Technology for Remote and Virtual Practical Researches on Robotics

Intelligent Control and Systems:

Yefymenko M.V.
Solution of the Problems of Controlling the Motion of a Point on a Sphere

Miliavskyi Yu.L.
Identification in Cognitive Maps in Impulse Process Mode with In-complete Measurement of Nodes Coordinates

Medical and Biological Cybernetics:

Kaplin I.V., Kochina M.L., Demin Yu.A., Firsov O.H.
The System of Intraocular Pres-sure Assessment Using Interference Eye Pictures

ChernyshovA T.A.
Criteria and Method for Detection of Circulating Tumor Cells

Issue 4 (194), article 5

DOI:https://doi.org/10.15407/kvt194.04.079

Kibern. vyčisl. teh., 2018, Issue 4 (194), pp.

М.І. Vovk, PhD (Biology), Senior Researcher,
Head of Bioelectrical Control & Medical Cybernetics Department
e-mail: vovk@irtc.org.ua; imvovk3940@gmail.com

International Research and Training Center for Information Technologies
and Systems of the National Academy of Sciences of Ukraine
and Ministry of Education and Science of Ukraine,
Glushkov ave., 40, Kiev, 03680 GSP, Ukraine

INFORMATION TECHNOLOGY OF MOVEMENT CONTROL. EVOLUTION OF SYNTHESIS AND DEVELOPMENT PROSPECTS

Introduction. Movement training is one of the main factors to mobilize person’s reserves for movement restoration

The purpose of the article is to consider the theoretical and technological bases of the evolution of synthesis of biotechnical systems for motion control, to show the role of new information technologies and means of digital medicine in the synthesis of systems for personal control of movements for the restoration of motor and speech functions that are affected by pathology.

Results. The evolution of the synthesis of technologies of bioelectric control of human movements is given in the analysis of several generations of programmed muscle electrostimulators such as MIOTON, MIOSTIMUL and the new class of digital medicine devices TRENAR®. The main feature of these devices is the use of specially processed electromyographic (EMG) signals as programs to control signals of electrical stimulation and feedback. The principles, criteria, methods, programs, on the basis of which the innovative technology of personal training / restoration of movements TRENAR® is synthesized are considered. The computer program-apparatus complex “PROMOVА-1” is presented, that implements new technology of personal reconstruction of oral speech after a stroke based on the original techniques of fine motor hand training. Prospective studies are aimed at the synthesis of mobile informational and consulting assistance to the doctor in diagnosing the deficit of motor and speech functions and the formation of individual rehabilitation plans; at the synthesis of technologies to control muscle activity coordination during the performance of coordinated movements and rehabilitation treatment of posture defects.

Conclusion. Current researches are aimed at the further development of such priority areas in medicine as an individual approach to treatment, digital medicine, mobile health based on new information technologies.

Keywords: bioelectric control, movement, speech, coordination, posture, personal rehabilitation, methods, programs, myelectrostimulation, digital medicine.

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REFERENCES

1. Inventor’s certificate 190525 USSR. The method of motor control / L. Aleev, S. Bunimovich. No 1019769/31-16; claimed 26.06.65; published 29.12.66, Bull. No 2. (in Russian).

2. Aleev L.S. Bioelectrical system “Mioton” and motor functions of a person. Bull. of AS of USSR. 1969. Iss. 4. P. 70–80 (in Russian).

3. Aleev L.S., Vovk M.I., Gorbanev V., Shevchenko A. «Mioton» in motor control. Kiev: Nauk. dumka, 1980. 142 p. (in Russian).

4. Inventor’s certificate 321 245 USSR. The method of motor control of a person / L. Aleev, S. Bunimovich, M. Vovk, V. Gorbanev, A. Shevchenko. No1455753/31-16; claimed 22.06.1970; registered 03.09.1971. (in Russian).

5. Inventor’s certificate 929 054 USSR. Multichannel device for adaptive bioelectrical motor control of a person / L. Aleev, M. Vovk, V. Goranev, A. Shevchenko. No 2428608/28-13; claimed 13.12.76; published 23.05.82, Bull. № 19 (in Russian).

6. Inventor’s certificate 976 952 USSR Multichannel device for adaptive bioelectrical motor control of a person / L. Aleev, M. Vovk, V. Goranev, A. Shevchenko. No 2436412/28-13; claimed 03.01.77; published 30.11.82, Bull. №44. (in Russian).

7. Bioelectrically controlled electric stimulator of human muscles: United States Patent 4,165,750 Aug. 28, 1979.

8. Gritsenko V.I., Kotova A., Vovk M et.al. Information technology in Biology and Medicine. Lecture course. Kyiv: Nauk. Dumka, 2007. 382 p. (in Ukrainian).

9. Vovk M.I. Bioinformatic technology of motor control of a person. Kibernetika i vyčislitelnaâ tehnika. 2010. Iss. 161. P. 42–52 (in Russian).

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13. The way to treat speech desorders: pat. UA, A61N 1/36, no. 111388, claimed 03.06.2014, publshed 25.04.2016, Bulletin no 18 (in Ukrainian).

14. Vovk M.I., Galyan Ye.B. Personаlized biotechnical system to restore speech. Kibernetika i vyčislitelnaâ tehnika.. 2015. Iss. 179. P. 5–19 (in Russian).

15. Vovk M.I., Galyan Ye.B. Organization of Intelligent Hand Movements Control to Restore Speech. Kibernetika i vyčislitelnaâ tehnika. 2016. Iss. 184. P. 25–43 (in Russian).

16. Galyan Ye.B. Specialized software module of speech rehabilitation technology, architecture and functional interaction of its components. Control Systems and Machines. 2014. Iss. 6. P. 52–58 (in Russian).

17. Vovk M.I., Peleshok S.R., Galyan Ye.B. Ovcharenko M.A. The method of assessment of motor and sensory speech disorders. Collected papers of scientific-information center “Knowledge” based on XІ International correspondence scientific-practical conference: «The development of science in the XXI century», part 3. Kharkiv: collected papers. Donetsk: Scientific-information center “Knowledge”, 2016. P. 70–76 (in Russian).

18. Vovk M.I., Kutsyak O.A., Lauta A.D., Ovcharenko M.A. Information Support of Researches on the Dynamics of Movement Restoration After the Stroke. Kibernetika i vyčislitelnaâ tehnika.. 2017. № 3 (189). P. 61–78 (in Ukrainian).

19. Vovk M.I., Galyan Ye.B., Kutsyak O.A., Lauta A.D. Formation of individual complex of control actions for motor and speech rehabilitation after a stroke. Kibernetika i vyčislitelnaâ tehnika. 2018. № 3 (193). P. 43–63. (in Ukrainian).

Received 14.09.2018

Issue 4 (194), article 4

DOI:https://doi.org/10.15407/kvt194.04.061

Kibern. vyčisl. teh., 2018, Issue 4 (194), pp.

L.M. KOZAK, DSc (Biology), Senior Researcher,
Leading Researcher of the Medical Information Systems Department
e-mail: lmkozak52@gmail.com

A.S. KOVALENKO, DSc (Medicine), Professor,
Head of the Medical Information Systems Department
e-mail: askov49@gmail.com

O.A. KRYVOVA, Researcher of the Medical Information Systems Department
e-mail: ol.kryvova@gmail.com

O.A. ROMANYUK, Junior Researcher of Medical Information Systems Department
e-mail: ksnksn7@gmail.com

International Research and Training Center for Information Technologies
and Systems of the National Academy of Sciences of Ukraine
and Ministry of Education and Science of Ukraine,
Glushkov ave., 40, Kiev, 03187, Ukraine

DIGITAL TRANSFORMATION IN MEDICINE: FROM FORMALIZED MEDICAL DOCUMENTS TO INFORMATION TECHNOLOGIES OF DIGITAL MEDICINE

Introduction. According to the Concept of Ukraine`s Digital Economy and Society Development in 2018-2020, the key components of “digitalization” are the development of digital infrastructure — broadband Internet throughout Ukraine, and the promotion of digital transformations in various sectors of the economy and society, including medicine.

The purpose of the paper is to analyze the stages of digital transformation in medicine and the results of authors and their colleagues of the MIS department for the development of information technologies of digital medicine.

Results. A generated model of digital transformation in medicine is presented and several main stages of this transformation are highlighted: І — digital transformation of primary medical information; ІІ — development of support systems for the diagnostic and treatment process; ІІІ — development of technologies and systems for supporting the physicians` activities with digital information; IV — mobile medicine; V — the digital medicine globalization. The method of determining the markers of the functional state of the cardiovascular system based on mathematical models of forecasting and classification with the use of Data Mining is proposed. The method allows detecting and determining the prognostic values of ECG parameters of the CVS functional state for different groups of patients. The developed IT for supporting the processes of receiving, transmitting and storing digital medical images is aimed at ensuring the effective operation of a physician with digital information from various sources: functional diagnostic complexes, digital medical data storage and images using Picture Archiving and Communication Systems (PACS) and cloud technologies . The proposed telemedicine systems theory including the formulated principles of organizing these systems, criteria and methods for analyzing digital medical data has been implemented for elaborating and functioning the Telemedicine Centre. It enables to cover the population in more than 20 Ukraine`s regions with qualified medical assistance.

Conclusions. The digital transformation in medicine like any new process takes place with a gradual complication of tasks, methods and means of their implementation: from formalization of primary medical information to improvement of methods of its analysis, transfer and storage to improve the quality of medical care for patients at any point of the world.

Keywords: digital transformation in medicine, formalized medical records, Data Mining, IT for assessing human state and physiological systems` state, telemedicine, m-medicine.

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REFERENCES

1. About the conceptualization of the concept of the development of the digital economy of Ukraine and 2018–2020 on the basis of the plan set for the project: Disposition of the Government of Ukraine. URL: http://www.me.gov.ua/Documents/ (Last accessed: 06.07.18) (in Ukranian).

2. The Nine Elements of Digital Transformation. URL:  https://sloanreview.mit.edu/article/the-nine-elements-of-digital-transformation/?social_token=d65abc6db70ba459408562abb8de32bc &utm_source= facebook&utm_medium=social&mmmmmt (Last accessed: 27.06.18)

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11. Evtushenko A.S., Kozak L.M., Kochina M.L. Evaluation of the relationship structure be-tween the functional indicators of operators in visual work using factor models. Kiber-netika i vyčislitel’naâ tehnika. 2016. Vol. 185. P. 60–76 (in Russian).

12. Rogozinskaya N.S., Kozak L.M. Information support of technology for automated moni-toring of the health of the population. Kibernetika i Sistemnyj Analiz. 2013. № 6. P. 162-173 (in Russian).

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Received 29.08.2018

Issue 4 (194), article 3

DOI:https://doi.org/10.15407/kvt194.04.041

Kibern. vyčisl. teh., 2018, Issue 4 (194), pp.

V.S. STEPASHKO, DSc (Engineering), Professor,
Head of Dep. for Information Technologies of Inductive Modeling
e-mail: stepashko@irtc.org.ua

International Research and Training Center for Information Technologies
and Systems of the National Academy of Sciences of Ukraine
and Ministry of Education and Science of Ukraine,
Acad. Glushkov av., 40, Kyiv, 03187, Ukraine

FORMATION AND DEVELOPMENT OF SELF-ORGANIZING INTELLIGENT TECHNOLOGIES OF INDUCTIVE MODELING

Introduction. Effective solution of control and decision-making tasks in complex systems should use the results of mathematical modeling. To construct adequate predictive models, many modern methods and tools are available which may be generally based on two principal approaches: theory-driven (deductive) and data-driven (inductive) ones. The data-driven methods are basic for solving typical tacks of data mining; they implement an inductive process of transition from particular data to models generalizing the data. Among all such methods, very notable are those being developed within the area of GMDH-based inductive modeling founded several decades ago by academician O.H. Ivakhnenko.

The purpose of this paper is analysing the background of the GMDH invention by Ivakhnenko and the evolution of model self-organization ideas, methods and tools during the half-century historical period of successful development of the inductive modeling methodology.

Results. Professor Ivakhnenko acquired broad knowledge in the areas of automatic control, engineering cybernetics and emerging neuroscience initiated by the idea of percep-tron. These were those prerequisites which helped Ivakhnenko to synthesize his original self-organizing approach to solving tasks of constructing models of objects and processes on the basis of experimental data. The paper tracks evolution of scientific ideas and views of Ivakhnenko and main achievements in development of GMDH during the period 1968-1997. Contributions of researchers from different countries to the GMDH modification and application are characterized. Results of further developments of inductive modeling meth-ods and tools in the ITIM department are presented and the most promising prospects of in-vestigations in this field are indicated.

Conclusions. Main prerequisites facilitating the creation of the GMDH by O.H. Ivakhnenko were analysed, basic fundamental, technological and applied achievements of the half-century development of inductive modeling both in Ukraine and abroad were characterized, as well as the most prospective ways of further research were formulated.

Keywords: mathematical modeling, data-driven modeling, model self-organization, GMDH, inductive modeling, noise-immune modeling, information technology, case study.

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REFERENCES

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Received 20.09.2018